SlideShare a Scribd company logo
Seminar 5 Data Collection, Preparation and Analysis Using SPSS By Dr. Muhammad Ramzan [email_address] ,  03004487844 Edited by Ahsan Khan Eco [email_address] 03008046243
Data Collection-Methods Data collection method is impacted by the method of research you choose. It is usually done through: Data collection by the individual researcher Collection through hired researchers Collection through firms
Data Collection-Formats Format of data is influenced by the method of research, as it could be Printed questionnaires Interview sheets (in-person or telephonic) Focus group notes Observation notes Email or web responses Content analysis notes, pictures, documentaries Printed, e-records, scanned data Literature review
Data Preparation Preparation of data file It is important to convert raw data into a usable data for analysis The analysis and results will surely depend on the quality of data There are possibilities of errors in handling instruments, raw data, transcribing, data entry, assigning codes, values, value labels Data need to be cleaned to fulfill the analysis conations
Data Analysis Analysis of data is influenced by a number of factors. They are but not limited to: The purpose of research The type research questions and hypothesis The method of research and format of data Use of software for management, manipulation and analysis of data Researchers skills and capabilities Techniques used for data The quality of the data
Stages of Data Analysis ERROR  CHECKING AND VERIFICATION EDITING DATA ANALYSIS DATA ENTRY CODING
Data Preparation Process Select Data Analysis Strategy Prepare Preliminary Plan of Data Analysis Check Questionnaire Edit Code Transcribe Clean Data Statistically Adjust the Data
Questionnaire Checking A questionnaire returned from the field may be unacceptable for several reasons. Parts of the questionnaire may be incomplete. The pattern of responses may indicate that the respondent did not understand or follow the instructions. The responses show little variance.  One or more pages are missing. The questionnaire is received after the pre-established cutoff date. The questionnaire is answered by someone who does not qualify for participation.
Questionnaire Checking We need to find valid questionnaires for data analysis Each questionnaire/response need allotment of a case number for future reference Questionnaire/response need filing in an order for retrieval and verification
Editing of Responses Treatment of Unsatisfactory Results Returning to the Field –  The questionnaires with unsatisfactory responses may be returned to the field, where the interviewers re-contact the respondents.  Assigning Missing Values –  If returning the questionnaires to the field is not feasible, the editor may assign missing values to unsatisfactory responses.  Discarding Unsatisfactory Respondents –  In this approach, the respondents with unsatisfactory responses are simply discarded.
CONSISTENCY COMPLETENESS QUESTIONS  ANSWERED OUT OF ORDER Reasons for Editing
Editing The process of checking and adjusting the data for omissions for legibility for consistency And readying them for coding and storage
Codes The rules for interpreting, classifying, and recording data in the coding process The actual numerical or other character symbols
Coding Coding  means assigning a code, usually a number, to each possible response to each question.  The code includes an indication of the column position (field) and data record it will occupy.  Coding Questions Fixed field codes , which mean that the number of records for each respondent is the same and the same data appear in the same column(s) for all respondents, are highly desirable.  If possible, standard codes should be used for missing data.  Coding of structured questions is relatively simple, since the response options are predetermined.  In questions that permit a large number of responses, each possible response option should be assigned a separate column.
Coding Guidelines for coding unstructured questions : Category codes should be mutually exclusive and collectively exhaustive.  Only a few (10% or less) of the responses should fall into the “other” category.  Category codes should be assigned for critical issues even if no one has mentioned them.  Data should be coded to retain as much detail as possible .
Codebook A  codebook  contains coding instructions and the necessary information about variables in the data set.  A codebook generally contains the following information: column number record number variable number variable name question number instructions for coding
Coding Questionnaires The respondent code and the record number appear on each record in the data.  The first record contains the additional codes: project code, interviewer code, date and time codes, and validation code.  It is a good practice to insert blanks between parts Here are examples of coding
1a.  How many years have you been playing tennis on a regular basis?  Number of years: __________ b.  What is your level of play? Novice . . . . . . . . . . . . . . .  -1 Advanced . . . . . . . -4 Lower Intermediate . . . . . -2 Expert  . . . . . . . . . -5 Upper Intermediate . . . . .  -3 Teaching Pro  . . . .  -6 c.  In the last 12 months, has your level of play improved, remained the same or decreased? Improved. . . . . . . . . . . . . . -1 Decreased. . . . . . .  -3 Remained the same . . . . . -2
2a.  Do you belong to a club with tennis facilities? Yes . . . . . . .   -1 No  . . . . . . .   -2 b.  How many people in your household - including yourself - play tennis? Number who play tennis ___________  3a.  Why do you play tennis? (Please “X” all that apply.) To have fun . . . . . . . . . .  -1 To stay fit.  . . . . . . . . . . .  -2 To be with friends. . . . . .  -3 To improve my game . . . -4 To compete. . . . . . . . . . . -5 To win. . . . . . . . . . . . . . . -6 b.  In the past 12 months, have you purchased any tennis instructional  books  or video tapes? Yes . . . . . . .   -1 No  . . . . . . .   -2
4.  Please rate each of the following with regard to  this  flight, if applicable. Excellent  Good  Fair  Poor 4  3  2  1 Courtesy and Treatment from the: Skycap at airport . . . . . . . . . . . . . .  Airport Ticket Counter Agent . . . . .  Boarding Point (Gate) Agent . . . . . Flight Attendants . . . . . . . . . . . . . . Your Meal or Snack. . . . . . . . . . . . . Beverage Service . . . . . . . . . . . . . . Seat Comfort. . . . . . . . . . . . . . . . . .  Carry-On Stowage Space. . . . . . . . Cabin Cleanliness  . . . . . . . . . . . . .  Video/Stereo Entertainment . . . . . . On-Time Departure  . . . . . . . . . . . .
“ I believe that people judge your success by the kind of car you drive.” Strongly agree  5 Mildly agree  4 Neither agree nor disagree  3 Mildly agree  2 Strongly disagree  1 Strongly agree  + 1 Mildly agree  +2 Neither agree nor disagree  0 Mildly agree  - 1 Strongly disagree  - 2
Data Transcription Transcribe raw data into testable form Determine variables Convert raw data into meaningful for further processing and answering the research questions and testing hypothesis Assign values, weights, value labels Scanning, data entry
Data Entry The process of transforming data from the research project to computers Transferring data files from excel to SPSS Optical scanning systems Marked-sensed questionnaires In SPSS open the data view And enter the data Practical session
Data Cleaning: Consistency Checks Consistency checks  identify data that are out of range, logically inconsistent, or have extreme values.  Computer packages like SPSS, SAS, EXCEL and MINITAB can be programmed to identify out-of-range values for each variable and print out the respondent code, variable code, variable name, record number, column number, and out-of-range value. Extreme values should be closely examined .
Data Cleaning Through SPSS Click analyze in main menu of SPSS data, then click on descriptive analysis, then frequencies Select variable that you want to check Click on statistics and tick minimum and maximum values Click on continue Summary of results will provide each of variable you selected and then breakdown of responses Check if there are inconsistencies Go to data file and remove if there is any You can clean your data using SPSS descriptive analysis features
Data Cleaning: Treatment of Missing Responses Substitute a Neutral Value  – A neutral value, typically the mean response to the variable, is substituted for the missing responses.  Substitute an Imputed Response  – The respondents' pattern of responses to other questions are used to impute or calculate a suitable response to the missing questions.  In  casewise deletion , cases, or respondents, with any missing responses are discarded from the analysis.  In  pairwise deletion , instead of discarding all cases with any missing values, the researcher uses only the cases or respondents with complete responses for each calculation.
Statistically Adjusting the Data: Weighting In  weighting , each case or respondent in the database is assigned a weight to reflect its importance relative to other cases or respondents. Weighting is most widely used to make the sample data more representative of a target population on specific characteristics.  Yet another use of weighting is to adjust the sample so that greater importance is attached to respondents with certain characteristics Example
Variable Re-specification Variable respecification  involves the transformation of data to create new variables or modify existing variables.  E.G., the researcher may create new variables that are composites of several other variables.  Dummy variables are used for respecifying categorical variables.  The general rule is that to respecify a categorical variable with  K  categories,  K -1 dummy variables are needed .
Variable Re-specification Product Usage Original Dummy  Variable  Code Category Variable Code X 1 X 2 X 3 Nonusers 1 1 0 0 Light users 2 0 1 0 Medium users 3 0 0 1 Heavy users 4 0 0 0   Note that  X 1  = 1 for nonusers and 0 for all others.  Likewise,  X 2  = 1 for light users and 0 for all others, and  X 3  = 1 for medium users and 0 for all others.  In analyzing the data,  X 1 ,  X 2 , and  X 3  are used to represent all user/nonuser groups.
Data Transformation Data conversion Changing the original form of the data to a new format More appropriate data analysis New variables
New Variables Collapsing 5-point scale into 3-point scale Collective, average data of respondents and variables Reversal of negative statements Example
Collapsing a Five-Point Scale Strongly Agree Agree Neither Agree nor Disagree Disagree Strongly Disagree Strongly Agree/Agree Neither Agree nor Disagree Disagree/Strongly Disagree
Descriptive Analysis The transformation of raw data into a form that will make them easy to understand and interpret; rearranging, ordering, and manipulating data to generate descriptive information
Tabulation Tabulation - Orderly arrangement of data in a table or other summary format Frequency table Percentages
Frequency Table The arrangement of statistical data in a row-and-column format that exhibits the count of responses or observations for each category assigned to a variable
Central Tendency Measure of Central Measure of Type of Scale Tendency Dispersion Nominal Mode None Ordinal Median Percentile Interval or ratio Mean Standard deviation
Cross-Tabulation A technique for organizing data by groups, categories, or classes, thus facilitating comparisons; a joint frequency distribution of observations on two or more sets of variables Contingency table- The results of a cross-tabulation of two variables, such as survey questions
Cross-Tabulation Analyze data by groups or categories Compare differences Contingency table Percentage cross-tabulations
Type of Measurement Nominal Two categories More than two categories Frequency table Proportion (percentage) Frequency table Category proportions  (percentages) Mode Type of  descriptive analysis
Type of Measurement Type of  descriptive analysis Ordinal Rank order Median
Type of Measurement Type of  descriptive analysis Interval Arithmetic mean
Type of Measurement Type of  descriptive analysis Ratio Index numbers Geometric mean
You are good students-NOW PRACTICE By Dr. Muhammad Ramzan [email_address] ,  03004487844 Edited by Ahsan Khan Eco [email_address] 03008046243
Ad

More Related Content

What's hot (20)

1. introduction to business research
1. introduction to business research1. introduction to business research
1. introduction to business research
Muneer Hussain
 
Process Consultation and team building
Process Consultation and team buildingProcess Consultation and team building
Process Consultation and team building
Vaibhav Vyas
 
Employee Counselling
Employee CounsellingEmployee Counselling
Employee Counselling
Arsalan Ahmad
 
Organizational Development
Organizational DevelopmentOrganizational Development
Organizational Development
Ashit Jain
 
Force field analysis
Force field analysisForce field analysis
Force field analysis
Robin Jadhav
 
Organizational diagnosis ppt
Organizational diagnosis pptOrganizational diagnosis ppt
Organizational diagnosis ppt
Nandu Warrier
 
corporate governance and role in strategic management
corporate governance and role in strategic managementcorporate governance and role in strategic management
corporate governance and role in strategic management
zeba khan
 
HRD approach to Industrial Relations
HRD approach to Industrial RelationsHRD approach to Industrial Relations
HRD approach to Industrial Relations
Apoorva Gowda
 
Leadership ob
Leadership obLeadership ob
Leadership ob
Rajeev Thakur
 
Techniques of strategic evaluation and control
Techniques of strategic evaluation and controlTechniques of strategic evaluation and control
Techniques of strategic evaluation and control
NidhinaThottuvayalil
 
Team intervention od
Team intervention   odTeam intervention   od
Team intervention od
suresh66
 
Intro shrm 1
Intro shrm 1Intro shrm 1
Intro shrm 1
Rahul Sharma
 
Ethics in compensaton
Ethics in compensatonEthics in compensaton
Ethics in compensaton
havisha gupta
 
Factors That Shape a Company's Strategies-SM-MBA
Factors That Shape a Company's Strategies-SM-MBAFactors That Shape a Company's Strategies-SM-MBA
Factors That Shape a Company's Strategies-SM-MBA
Chandra Shekar Immani
 
Ppt 1-introduction-brm
Ppt 1-introduction-brmPpt 1-introduction-brm
Ppt 1-introduction-brm
PES Institution of Advanced Management Studies, Shivamogga
 
OD Interventions
OD Interventions OD Interventions
OD Interventions
vravishankar2011
 
Individual intervention - Organizational Development
Individual intervention - Organizational DevelopmentIndividual intervention - Organizational Development
Individual intervention - Organizational Development
Namrata Jadhav
 
Organizational Learning
Organizational LearningOrganizational Learning
Organizational Learning
Prachi Singla
 
1.1 business research methods
1.1 business research  methods1.1 business research  methods
1.1 business research methods
LeenaKP
 
Strategic Evaluation and Control
Strategic Evaluation and ControlStrategic Evaluation and Control
Strategic Evaluation and Control
NidhinaThottuvayalil
 
1. introduction to business research
1. introduction to business research1. introduction to business research
1. introduction to business research
Muneer Hussain
 
Process Consultation and team building
Process Consultation and team buildingProcess Consultation and team building
Process Consultation and team building
Vaibhav Vyas
 
Employee Counselling
Employee CounsellingEmployee Counselling
Employee Counselling
Arsalan Ahmad
 
Organizational Development
Organizational DevelopmentOrganizational Development
Organizational Development
Ashit Jain
 
Force field analysis
Force field analysisForce field analysis
Force field analysis
Robin Jadhav
 
Organizational diagnosis ppt
Organizational diagnosis pptOrganizational diagnosis ppt
Organizational diagnosis ppt
Nandu Warrier
 
corporate governance and role in strategic management
corporate governance and role in strategic managementcorporate governance and role in strategic management
corporate governance and role in strategic management
zeba khan
 
HRD approach to Industrial Relations
HRD approach to Industrial RelationsHRD approach to Industrial Relations
HRD approach to Industrial Relations
Apoorva Gowda
 
Techniques of strategic evaluation and control
Techniques of strategic evaluation and controlTechniques of strategic evaluation and control
Techniques of strategic evaluation and control
NidhinaThottuvayalil
 
Team intervention od
Team intervention   odTeam intervention   od
Team intervention od
suresh66
 
Ethics in compensaton
Ethics in compensatonEthics in compensaton
Ethics in compensaton
havisha gupta
 
Factors That Shape a Company's Strategies-SM-MBA
Factors That Shape a Company's Strategies-SM-MBAFactors That Shape a Company's Strategies-SM-MBA
Factors That Shape a Company's Strategies-SM-MBA
Chandra Shekar Immani
 
Individual intervention - Organizational Development
Individual intervention - Organizational DevelopmentIndividual intervention - Organizational Development
Individual intervention - Organizational Development
Namrata Jadhav
 
Organizational Learning
Organizational LearningOrganizational Learning
Organizational Learning
Prachi Singla
 
1.1 business research methods
1.1 business research  methods1.1 business research  methods
1.1 business research methods
LeenaKP
 

Viewers also liked (11)

Basics of data_interpretation
Basics of data_interpretationBasics of data_interpretation
Basics of data_interpretation
Vasista Vinuthan
 
Data Interpretation
Data Interpretation Data Interpretation
Data Interpretation
sonakshi saxena
 
Data Analysis
Data AnalysisData Analysis
Data Analysis
sikander kushwaha
 
Statistical analysis of process data 7 stages oil flow chart power point temp...
Statistical analysis of process data 7 stages oil flow chart power point temp...Statistical analysis of process data 7 stages oil flow chart power point temp...
Statistical analysis of process data 7 stages oil flow chart power point temp...
SlideTeam.net
 
Data interpretation
Data interpretationData interpretation
Data interpretation
Veeraragavan Subramaniam
 
2012 data analysis
2012 data analysis2012 data analysis
2012 data analysis
cherylyap61
 
Initial analysis of data metpen
Initial analysis of data metpenInitial analysis of data metpen
Initial analysis of data metpen
Gfv Gfv
 
Data Analysis, Presentation and Interpretation of Data
Data Analysis, Presentation and Interpretation of DataData Analysis, Presentation and Interpretation of Data
Data Analysis, Presentation and Interpretation of Data
Roqui Malijan
 
Data Preparation and Processing
Data Preparation and ProcessingData Preparation and Processing
Data Preparation and Processing
Mehul Gondaliya
 
Quantitative Data Analysis
Quantitative Data AnalysisQuantitative Data Analysis
Quantitative Data Analysis
Asma Muhamad
 
Chapter 10-DATA ANALYSIS & PRESENTATION
Chapter 10-DATA ANALYSIS & PRESENTATIONChapter 10-DATA ANALYSIS & PRESENTATION
Chapter 10-DATA ANALYSIS & PRESENTATION
Ludy Mae Nalzaro,BSM,BSN,MN
 
Basics of data_interpretation
Basics of data_interpretationBasics of data_interpretation
Basics of data_interpretation
Vasista Vinuthan
 
Statistical analysis of process data 7 stages oil flow chart power point temp...
Statistical analysis of process data 7 stages oil flow chart power point temp...Statistical analysis of process data 7 stages oil flow chart power point temp...
Statistical analysis of process data 7 stages oil flow chart power point temp...
SlideTeam.net
 
2012 data analysis
2012 data analysis2012 data analysis
2012 data analysis
cherylyap61
 
Initial analysis of data metpen
Initial analysis of data metpenInitial analysis of data metpen
Initial analysis of data metpen
Gfv Gfv
 
Data Analysis, Presentation and Interpretation of Data
Data Analysis, Presentation and Interpretation of DataData Analysis, Presentation and Interpretation of Data
Data Analysis, Presentation and Interpretation of Data
Roqui Malijan
 
Data Preparation and Processing
Data Preparation and ProcessingData Preparation and Processing
Data Preparation and Processing
Mehul Gondaliya
 
Quantitative Data Analysis
Quantitative Data AnalysisQuantitative Data Analysis
Quantitative Data Analysis
Asma Muhamad
 
Ad

Similar to Business Research Methods. data collection preparation and analysis (20)

Abdm4064 week 11 data analysis
Abdm4064 week 11 data analysisAbdm4064 week 11 data analysis
Abdm4064 week 11 data analysis
Stephen Ong
 
Mba ii rm unit-4.1 data analysis & presentation a
Mba ii rm unit-4.1 data analysis & presentation aMba ii rm unit-4.1 data analysis & presentation a
Mba ii rm unit-4.1 data analysis & presentation a
Rai University
 
Dataanalysis
DataanalysisDataanalysis
Dataanalysis
E Muhammad Shabamaliki
 
data analysis techniques and statistical softwares
data analysis techniques and statistical softwaresdata analysis techniques and statistical softwares
data analysis techniques and statistical softwares
Dr.ammara khakwani
 
Research Method for Business chapter 11-12-14
Research Method for Business chapter 11-12-14Research Method for Business chapter 11-12-14
Research Method for Business chapter 11-12-14
Mazhar Poohlah
 
Data analysis market research
Data analysis   market researchData analysis   market research
Data analysis market research
sachinudepurkar
 
Business Research Methods. measurement questionnaire and sampling
Business Research Methods. measurement questionnaire and samplingBusiness Research Methods. measurement questionnaire and sampling
Business Research Methods. measurement questionnaire and sampling
Ahsan Khan Eco (Superior College)
 
Mb0050 research methodology (1)
Mb0050   research methodology (1)Mb0050   research methodology (1)
Mb0050 research methodology (1)
smumbahelp
 
Mba2216 week 11 data analysis part 01
Mba2216 week 11 data analysis part 01Mba2216 week 11 data analysis part 01
Mba2216 week 11 data analysis part 01
Stephen Ong
 
Text Analytics for Legal work
Text Analytics for Legal workText Analytics for Legal work
Text Analytics for Legal work
AlgoAnalytics Financial Consultancy Pvt. Ltd.
 
Data Samples & Data AnalysesNYU SCPSDataba
Data Samples & Data AnalysesNYU  SCPSDatabaData Samples & Data AnalysesNYU  SCPSDataba
Data Samples & Data AnalysesNYU SCPSDataba
OllieShoresna
 
Workbook-I-Quantitative-Analysis. for researcher and other
Workbook-I-Quantitative-Analysis. for researcher and otherWorkbook-I-Quantitative-Analysis. for researcher and other
Workbook-I-Quantitative-Analysis. for researcher and other
FetiCool
 
Data analysis and Presentation
Data analysis and PresentationData analysis and Presentation
Data analysis and Presentation
Jignesh Kariya
 
Unit_8_Data_processing,_analysis_and_presentation_and_Application (1).pptx
Unit_8_Data_processing,_analysis_and_presentation_and_Application (1).pptxUnit_8_Data_processing,_analysis_and_presentation_and_Application (1).pptx
Unit_8_Data_processing,_analysis_and_presentation_and_Application (1).pptx
tesfkeb
 
Analyzing survey data
Analyzing survey dataAnalyzing survey data
Analyzing survey data
Fatima Sultana
 
Business analyst
Business analystBusiness analyst
Business analyst
Hemanth Kumar
 
t-Test Project Instructions and Rubric Project Overvi.docx
t-Test Project Instructions and Rubric  Project Overvi.docxt-Test Project Instructions and Rubric  Project Overvi.docx
t-Test Project Instructions and Rubric Project Overvi.docx
mattinsonjanel
 
Q4-DATA ANALYSIS METHODS-WK4.pdf
Q4-DATA ANALYSIS METHODS-WK4.pdfQ4-DATA ANALYSIS METHODS-WK4.pdf
Q4-DATA ANALYSIS METHODS-WK4.pdf
MaLourdesLazaro1
 
Data Analysis
Data AnalysisData Analysis
Data Analysis
Clive McGoun
 
Intro to SPSS.ppt
Intro to SPSS.pptIntro to SPSS.ppt
Intro to SPSS.ppt
HasanGilani3
 
Abdm4064 week 11 data analysis
Abdm4064 week 11 data analysisAbdm4064 week 11 data analysis
Abdm4064 week 11 data analysis
Stephen Ong
 
Mba ii rm unit-4.1 data analysis & presentation a
Mba ii rm unit-4.1 data analysis & presentation aMba ii rm unit-4.1 data analysis & presentation a
Mba ii rm unit-4.1 data analysis & presentation a
Rai University
 
data analysis techniques and statistical softwares
data analysis techniques and statistical softwaresdata analysis techniques and statistical softwares
data analysis techniques and statistical softwares
Dr.ammara khakwani
 
Research Method for Business chapter 11-12-14
Research Method for Business chapter 11-12-14Research Method for Business chapter 11-12-14
Research Method for Business chapter 11-12-14
Mazhar Poohlah
 
Data analysis market research
Data analysis   market researchData analysis   market research
Data analysis market research
sachinudepurkar
 
Business Research Methods. measurement questionnaire and sampling
Business Research Methods. measurement questionnaire and samplingBusiness Research Methods. measurement questionnaire and sampling
Business Research Methods. measurement questionnaire and sampling
Ahsan Khan Eco (Superior College)
 
Mb0050 research methodology (1)
Mb0050   research methodology (1)Mb0050   research methodology (1)
Mb0050 research methodology (1)
smumbahelp
 
Mba2216 week 11 data analysis part 01
Mba2216 week 11 data analysis part 01Mba2216 week 11 data analysis part 01
Mba2216 week 11 data analysis part 01
Stephen Ong
 
Data Samples & Data AnalysesNYU SCPSDataba
Data Samples & Data AnalysesNYU  SCPSDatabaData Samples & Data AnalysesNYU  SCPSDataba
Data Samples & Data AnalysesNYU SCPSDataba
OllieShoresna
 
Workbook-I-Quantitative-Analysis. for researcher and other
Workbook-I-Quantitative-Analysis. for researcher and otherWorkbook-I-Quantitative-Analysis. for researcher and other
Workbook-I-Quantitative-Analysis. for researcher and other
FetiCool
 
Data analysis and Presentation
Data analysis and PresentationData analysis and Presentation
Data analysis and Presentation
Jignesh Kariya
 
Unit_8_Data_processing,_analysis_and_presentation_and_Application (1).pptx
Unit_8_Data_processing,_analysis_and_presentation_and_Application (1).pptxUnit_8_Data_processing,_analysis_and_presentation_and_Application (1).pptx
Unit_8_Data_processing,_analysis_and_presentation_and_Application (1).pptx
tesfkeb
 
t-Test Project Instructions and Rubric Project Overvi.docx
t-Test Project Instructions and Rubric  Project Overvi.docxt-Test Project Instructions and Rubric  Project Overvi.docx
t-Test Project Instructions and Rubric Project Overvi.docx
mattinsonjanel
 
Q4-DATA ANALYSIS METHODS-WK4.pdf
Q4-DATA ANALYSIS METHODS-WK4.pdfQ4-DATA ANALYSIS METHODS-WK4.pdf
Q4-DATA ANALYSIS METHODS-WK4.pdf
MaLourdesLazaro1
 
Ad

More from Ahsan Khan Eco (Superior College) (6)

Business Research Methods. search strategies for online databases
Business Research Methods. search strategies for online databasesBusiness Research Methods. search strategies for online databases
Business Research Methods. search strategies for online databases
Ahsan Khan Eco (Superior College)
 
Business Research Methods. primary data collection_survey_observation_and_exp...
Business Research Methods. primary data collection_survey_observation_and_exp...Business Research Methods. primary data collection_survey_observation_and_exp...
Business Research Methods. primary data collection_survey_observation_and_exp...
Ahsan Khan Eco (Superior College)
 
Business Research Methods. problem definition literature review and qualitati...
Business Research Methods. problem definition literature review and qualitati...Business Research Methods. problem definition literature review and qualitati...
Business Research Methods. problem definition literature review and qualitati...
Ahsan Khan Eco (Superior College)
 
business research process, design and proposal
business research process, design and proposalbusiness research process, design and proposal
business research process, design and proposal
Ahsan Khan Eco (Superior College)
 
Energy Consumption and Economic Development by ahsan khan eco
Energy Consumption and Economic Development by ahsan khan ecoEnergy Consumption and Economic Development by ahsan khan eco
Energy Consumption and Economic Development by ahsan khan eco
Ahsan Khan Eco (Superior College)
 
Team work by ahsan khan eco
Team work by ahsan khan ecoTeam work by ahsan khan eco
Team work by ahsan khan eco
Ahsan Khan Eco (Superior College)
 

Recently uploaded (20)

Q1 2025 Dropbox Earnings and Investor Presentation
Q1 2025 Dropbox Earnings and Investor PresentationQ1 2025 Dropbox Earnings and Investor Presentation
Q1 2025 Dropbox Earnings and Investor Presentation
Dropbox
 
UiPath Agentic Automation: Community Developer Opportunities
UiPath Agentic Automation: Community Developer OpportunitiesUiPath Agentic Automation: Community Developer Opportunities
UiPath Agentic Automation: Community Developer Opportunities
DianaGray10
 
GDG Cloud Southlake #42: Suresh Mathew: Autonomous Resource Optimization: How...
GDG Cloud Southlake #42: Suresh Mathew: Autonomous Resource Optimization: How...GDG Cloud Southlake #42: Suresh Mathew: Autonomous Resource Optimization: How...
GDG Cloud Southlake #42: Suresh Mathew: Autonomous Resource Optimization: How...
James Anderson
 
How to Install & Activate ListGrabber - eGrabber
How to Install & Activate ListGrabber - eGrabberHow to Install & Activate ListGrabber - eGrabber
How to Install & Activate ListGrabber - eGrabber
eGrabber
 
TrsLabs - Leverage the Power of UPI Payments
TrsLabs - Leverage the Power of UPI PaymentsTrsLabs - Leverage the Power of UPI Payments
TrsLabs - Leverage the Power of UPI Payments
Trs Labs
 
TrsLabs - Fintech Product & Business Consulting
TrsLabs - Fintech Product & Business ConsultingTrsLabs - Fintech Product & Business Consulting
TrsLabs - Fintech Product & Business Consulting
Trs Labs
 
Unlocking Generative AI in your Web Apps
Unlocking Generative AI in your Web AppsUnlocking Generative AI in your Web Apps
Unlocking Generative AI in your Web Apps
Maximiliano Firtman
 
Vaibhav Gupta BAML: AI work flows without Hallucinations
Vaibhav Gupta BAML: AI work flows without HallucinationsVaibhav Gupta BAML: AI work flows without Hallucinations
Vaibhav Gupta BAML: AI work flows without Hallucinations
john409870
 
Connect and Protect: Networks and Network Security
Connect and Protect: Networks and Network SecurityConnect and Protect: Networks and Network Security
Connect and Protect: Networks and Network Security
VICTOR MAESTRE RAMIREZ
 
Transcript: Canadian book publishing: Insights from the latest salary survey ...
Transcript: Canadian book publishing: Insights from the latest salary survey ...Transcript: Canadian book publishing: Insights from the latest salary survey ...
Transcript: Canadian book publishing: Insights from the latest salary survey ...
BookNet Canada
 
AsyncAPI v3 : Streamlining Event-Driven API Design
AsyncAPI v3 : Streamlining Event-Driven API DesignAsyncAPI v3 : Streamlining Event-Driven API Design
AsyncAPI v3 : Streamlining Event-Driven API Design
leonid54
 
MINDCTI revenue release Quarter 1 2025 PR
MINDCTI revenue release Quarter 1 2025 PRMINDCTI revenue release Quarter 1 2025 PR
MINDCTI revenue release Quarter 1 2025 PR
MIND CTI
 
AI You Can Trust: The Critical Role of Governance and Quality.pdf
AI You Can Trust: The Critical Role of Governance and Quality.pdfAI You Can Trust: The Critical Role of Governance and Quality.pdf
AI You Can Trust: The Critical Role of Governance and Quality.pdf
Precisely
 
Heap, Types of Heap, Insertion and Deletion
Heap, Types of Heap, Insertion and DeletionHeap, Types of Heap, Insertion and Deletion
Heap, Types of Heap, Insertion and Deletion
Jaydeep Kale
 
Zilliz Cloud Monthly Technical Review: May 2025
Zilliz Cloud Monthly Technical Review: May 2025Zilliz Cloud Monthly Technical Review: May 2025
Zilliz Cloud Monthly Technical Review: May 2025
Zilliz
 
The Microsoft Excel Parts Presentation.pdf
The Microsoft Excel Parts Presentation.pdfThe Microsoft Excel Parts Presentation.pdf
The Microsoft Excel Parts Presentation.pdf
YvonneRoseEranista
 
Enterprise Integration Is Dead! Long Live AI-Driven Integration with Apache C...
Enterprise Integration Is Dead! Long Live AI-Driven Integration with Apache C...Enterprise Integration Is Dead! Long Live AI-Driven Integration with Apache C...
Enterprise Integration Is Dead! Long Live AI-Driven Integration with Apache C...
Markus Eisele
 
Hybridize Functions: A Tool for Automatically Refactoring Imperative Deep Lea...
Hybridize Functions: A Tool for Automatically Refactoring Imperative Deep Lea...Hybridize Functions: A Tool for Automatically Refactoring Imperative Deep Lea...
Hybridize Functions: A Tool for Automatically Refactoring Imperative Deep Lea...
Raffi Khatchadourian
 
The Changing Compliance Landscape in 2025.pdf
The Changing Compliance Landscape in 2025.pdfThe Changing Compliance Landscape in 2025.pdf
The Changing Compliance Landscape in 2025.pdf
Precisely
 
AI 3-in-1: Agents, RAG, and Local Models - Brent Laster
AI 3-in-1: Agents, RAG, and Local Models - Brent LasterAI 3-in-1: Agents, RAG, and Local Models - Brent Laster
AI 3-in-1: Agents, RAG, and Local Models - Brent Laster
All Things Open
 
Q1 2025 Dropbox Earnings and Investor Presentation
Q1 2025 Dropbox Earnings and Investor PresentationQ1 2025 Dropbox Earnings and Investor Presentation
Q1 2025 Dropbox Earnings and Investor Presentation
Dropbox
 
UiPath Agentic Automation: Community Developer Opportunities
UiPath Agentic Automation: Community Developer OpportunitiesUiPath Agentic Automation: Community Developer Opportunities
UiPath Agentic Automation: Community Developer Opportunities
DianaGray10
 
GDG Cloud Southlake #42: Suresh Mathew: Autonomous Resource Optimization: How...
GDG Cloud Southlake #42: Suresh Mathew: Autonomous Resource Optimization: How...GDG Cloud Southlake #42: Suresh Mathew: Autonomous Resource Optimization: How...
GDG Cloud Southlake #42: Suresh Mathew: Autonomous Resource Optimization: How...
James Anderson
 
How to Install & Activate ListGrabber - eGrabber
How to Install & Activate ListGrabber - eGrabberHow to Install & Activate ListGrabber - eGrabber
How to Install & Activate ListGrabber - eGrabber
eGrabber
 
TrsLabs - Leverage the Power of UPI Payments
TrsLabs - Leverage the Power of UPI PaymentsTrsLabs - Leverage the Power of UPI Payments
TrsLabs - Leverage the Power of UPI Payments
Trs Labs
 
TrsLabs - Fintech Product & Business Consulting
TrsLabs - Fintech Product & Business ConsultingTrsLabs - Fintech Product & Business Consulting
TrsLabs - Fintech Product & Business Consulting
Trs Labs
 
Unlocking Generative AI in your Web Apps
Unlocking Generative AI in your Web AppsUnlocking Generative AI in your Web Apps
Unlocking Generative AI in your Web Apps
Maximiliano Firtman
 
Vaibhav Gupta BAML: AI work flows without Hallucinations
Vaibhav Gupta BAML: AI work flows without HallucinationsVaibhav Gupta BAML: AI work flows without Hallucinations
Vaibhav Gupta BAML: AI work flows without Hallucinations
john409870
 
Connect and Protect: Networks and Network Security
Connect and Protect: Networks and Network SecurityConnect and Protect: Networks and Network Security
Connect and Protect: Networks and Network Security
VICTOR MAESTRE RAMIREZ
 
Transcript: Canadian book publishing: Insights from the latest salary survey ...
Transcript: Canadian book publishing: Insights from the latest salary survey ...Transcript: Canadian book publishing: Insights from the latest salary survey ...
Transcript: Canadian book publishing: Insights from the latest salary survey ...
BookNet Canada
 
AsyncAPI v3 : Streamlining Event-Driven API Design
AsyncAPI v3 : Streamlining Event-Driven API DesignAsyncAPI v3 : Streamlining Event-Driven API Design
AsyncAPI v3 : Streamlining Event-Driven API Design
leonid54
 
MINDCTI revenue release Quarter 1 2025 PR
MINDCTI revenue release Quarter 1 2025 PRMINDCTI revenue release Quarter 1 2025 PR
MINDCTI revenue release Quarter 1 2025 PR
MIND CTI
 
AI You Can Trust: The Critical Role of Governance and Quality.pdf
AI You Can Trust: The Critical Role of Governance and Quality.pdfAI You Can Trust: The Critical Role of Governance and Quality.pdf
AI You Can Trust: The Critical Role of Governance and Quality.pdf
Precisely
 
Heap, Types of Heap, Insertion and Deletion
Heap, Types of Heap, Insertion and DeletionHeap, Types of Heap, Insertion and Deletion
Heap, Types of Heap, Insertion and Deletion
Jaydeep Kale
 
Zilliz Cloud Monthly Technical Review: May 2025
Zilliz Cloud Monthly Technical Review: May 2025Zilliz Cloud Monthly Technical Review: May 2025
Zilliz Cloud Monthly Technical Review: May 2025
Zilliz
 
The Microsoft Excel Parts Presentation.pdf
The Microsoft Excel Parts Presentation.pdfThe Microsoft Excel Parts Presentation.pdf
The Microsoft Excel Parts Presentation.pdf
YvonneRoseEranista
 
Enterprise Integration Is Dead! Long Live AI-Driven Integration with Apache C...
Enterprise Integration Is Dead! Long Live AI-Driven Integration with Apache C...Enterprise Integration Is Dead! Long Live AI-Driven Integration with Apache C...
Enterprise Integration Is Dead! Long Live AI-Driven Integration with Apache C...
Markus Eisele
 
Hybridize Functions: A Tool for Automatically Refactoring Imperative Deep Lea...
Hybridize Functions: A Tool for Automatically Refactoring Imperative Deep Lea...Hybridize Functions: A Tool for Automatically Refactoring Imperative Deep Lea...
Hybridize Functions: A Tool for Automatically Refactoring Imperative Deep Lea...
Raffi Khatchadourian
 
The Changing Compliance Landscape in 2025.pdf
The Changing Compliance Landscape in 2025.pdfThe Changing Compliance Landscape in 2025.pdf
The Changing Compliance Landscape in 2025.pdf
Precisely
 
AI 3-in-1: Agents, RAG, and Local Models - Brent Laster
AI 3-in-1: Agents, RAG, and Local Models - Brent LasterAI 3-in-1: Agents, RAG, and Local Models - Brent Laster
AI 3-in-1: Agents, RAG, and Local Models - Brent Laster
All Things Open
 

Business Research Methods. data collection preparation and analysis

  • 1. Seminar 5 Data Collection, Preparation and Analysis Using SPSS By Dr. Muhammad Ramzan [email_address] , 03004487844 Edited by Ahsan Khan Eco [email_address] 03008046243
  • 2. Data Collection-Methods Data collection method is impacted by the method of research you choose. It is usually done through: Data collection by the individual researcher Collection through hired researchers Collection through firms
  • 3. Data Collection-Formats Format of data is influenced by the method of research, as it could be Printed questionnaires Interview sheets (in-person or telephonic) Focus group notes Observation notes Email or web responses Content analysis notes, pictures, documentaries Printed, e-records, scanned data Literature review
  • 4. Data Preparation Preparation of data file It is important to convert raw data into a usable data for analysis The analysis and results will surely depend on the quality of data There are possibilities of errors in handling instruments, raw data, transcribing, data entry, assigning codes, values, value labels Data need to be cleaned to fulfill the analysis conations
  • 5. Data Analysis Analysis of data is influenced by a number of factors. They are but not limited to: The purpose of research The type research questions and hypothesis The method of research and format of data Use of software for management, manipulation and analysis of data Researchers skills and capabilities Techniques used for data The quality of the data
  • 6. Stages of Data Analysis ERROR CHECKING AND VERIFICATION EDITING DATA ANALYSIS DATA ENTRY CODING
  • 7. Data Preparation Process Select Data Analysis Strategy Prepare Preliminary Plan of Data Analysis Check Questionnaire Edit Code Transcribe Clean Data Statistically Adjust the Data
  • 8. Questionnaire Checking A questionnaire returned from the field may be unacceptable for several reasons. Parts of the questionnaire may be incomplete. The pattern of responses may indicate that the respondent did not understand or follow the instructions. The responses show little variance. One or more pages are missing. The questionnaire is received after the pre-established cutoff date. The questionnaire is answered by someone who does not qualify for participation.
  • 9. Questionnaire Checking We need to find valid questionnaires for data analysis Each questionnaire/response need allotment of a case number for future reference Questionnaire/response need filing in an order for retrieval and verification
  • 10. Editing of Responses Treatment of Unsatisfactory Results Returning to the Field – The questionnaires with unsatisfactory responses may be returned to the field, where the interviewers re-contact the respondents. Assigning Missing Values – If returning the questionnaires to the field is not feasible, the editor may assign missing values to unsatisfactory responses. Discarding Unsatisfactory Respondents – In this approach, the respondents with unsatisfactory responses are simply discarded.
  • 11. CONSISTENCY COMPLETENESS QUESTIONS ANSWERED OUT OF ORDER Reasons for Editing
  • 12. Editing The process of checking and adjusting the data for omissions for legibility for consistency And readying them for coding and storage
  • 13. Codes The rules for interpreting, classifying, and recording data in the coding process The actual numerical or other character symbols
  • 14. Coding Coding means assigning a code, usually a number, to each possible response to each question. The code includes an indication of the column position (field) and data record it will occupy. Coding Questions Fixed field codes , which mean that the number of records for each respondent is the same and the same data appear in the same column(s) for all respondents, are highly desirable. If possible, standard codes should be used for missing data. Coding of structured questions is relatively simple, since the response options are predetermined. In questions that permit a large number of responses, each possible response option should be assigned a separate column.
  • 15. Coding Guidelines for coding unstructured questions : Category codes should be mutually exclusive and collectively exhaustive. Only a few (10% or less) of the responses should fall into the “other” category. Category codes should be assigned for critical issues even if no one has mentioned them. Data should be coded to retain as much detail as possible .
  • 16. Codebook A codebook contains coding instructions and the necessary information about variables in the data set. A codebook generally contains the following information: column number record number variable number variable name question number instructions for coding
  • 17. Coding Questionnaires The respondent code and the record number appear on each record in the data. The first record contains the additional codes: project code, interviewer code, date and time codes, and validation code. It is a good practice to insert blanks between parts Here are examples of coding
  • 18. 1a. How many years have you been playing tennis on a regular basis? Number of years: __________ b. What is your level of play? Novice . . . . . . . . . . . . . . . -1 Advanced . . . . . . . -4 Lower Intermediate . . . . . -2 Expert . . . . . . . . . -5 Upper Intermediate . . . . . -3 Teaching Pro . . . . -6 c. In the last 12 months, has your level of play improved, remained the same or decreased? Improved. . . . . . . . . . . . . . -1 Decreased. . . . . . . -3 Remained the same . . . . . -2
  • 19. 2a. Do you belong to a club with tennis facilities? Yes . . . . . . . -1 No . . . . . . . -2 b. How many people in your household - including yourself - play tennis? Number who play tennis ___________ 3a. Why do you play tennis? (Please “X” all that apply.) To have fun . . . . . . . . . . -1 To stay fit. . . . . . . . . . . . -2 To be with friends. . . . . . -3 To improve my game . . . -4 To compete. . . . . . . . . . . -5 To win. . . . . . . . . . . . . . . -6 b. In the past 12 months, have you purchased any tennis instructional books or video tapes? Yes . . . . . . . -1 No . . . . . . . -2
  • 20. 4. Please rate each of the following with regard to this flight, if applicable. Excellent Good Fair Poor 4 3 2 1 Courtesy and Treatment from the: Skycap at airport . . . . . . . . . . . . . . Airport Ticket Counter Agent . . . . . Boarding Point (Gate) Agent . . . . . Flight Attendants . . . . . . . . . . . . . . Your Meal or Snack. . . . . . . . . . . . . Beverage Service . . . . . . . . . . . . . . Seat Comfort. . . . . . . . . . . . . . . . . . Carry-On Stowage Space. . . . . . . . Cabin Cleanliness . . . . . . . . . . . . . Video/Stereo Entertainment . . . . . . On-Time Departure . . . . . . . . . . . .
  • 21. “ I believe that people judge your success by the kind of car you drive.” Strongly agree 5 Mildly agree 4 Neither agree nor disagree 3 Mildly agree 2 Strongly disagree 1 Strongly agree + 1 Mildly agree +2 Neither agree nor disagree 0 Mildly agree - 1 Strongly disagree - 2
  • 22. Data Transcription Transcribe raw data into testable form Determine variables Convert raw data into meaningful for further processing and answering the research questions and testing hypothesis Assign values, weights, value labels Scanning, data entry
  • 23. Data Entry The process of transforming data from the research project to computers Transferring data files from excel to SPSS Optical scanning systems Marked-sensed questionnaires In SPSS open the data view And enter the data Practical session
  • 24. Data Cleaning: Consistency Checks Consistency checks identify data that are out of range, logically inconsistent, or have extreme values. Computer packages like SPSS, SAS, EXCEL and MINITAB can be programmed to identify out-of-range values for each variable and print out the respondent code, variable code, variable name, record number, column number, and out-of-range value. Extreme values should be closely examined .
  • 25. Data Cleaning Through SPSS Click analyze in main menu of SPSS data, then click on descriptive analysis, then frequencies Select variable that you want to check Click on statistics and tick minimum and maximum values Click on continue Summary of results will provide each of variable you selected and then breakdown of responses Check if there are inconsistencies Go to data file and remove if there is any You can clean your data using SPSS descriptive analysis features
  • 26. Data Cleaning: Treatment of Missing Responses Substitute a Neutral Value – A neutral value, typically the mean response to the variable, is substituted for the missing responses. Substitute an Imputed Response – The respondents' pattern of responses to other questions are used to impute or calculate a suitable response to the missing questions. In casewise deletion , cases, or respondents, with any missing responses are discarded from the analysis. In pairwise deletion , instead of discarding all cases with any missing values, the researcher uses only the cases or respondents with complete responses for each calculation.
  • 27. Statistically Adjusting the Data: Weighting In weighting , each case or respondent in the database is assigned a weight to reflect its importance relative to other cases or respondents. Weighting is most widely used to make the sample data more representative of a target population on specific characteristics. Yet another use of weighting is to adjust the sample so that greater importance is attached to respondents with certain characteristics Example
  • 28. Variable Re-specification Variable respecification involves the transformation of data to create new variables or modify existing variables. E.G., the researcher may create new variables that are composites of several other variables. Dummy variables are used for respecifying categorical variables. The general rule is that to respecify a categorical variable with K categories, K -1 dummy variables are needed .
  • 29. Variable Re-specification Product Usage Original Dummy Variable Code Category Variable Code X 1 X 2 X 3 Nonusers 1 1 0 0 Light users 2 0 1 0 Medium users 3 0 0 1 Heavy users 4 0 0 0   Note that X 1 = 1 for nonusers and 0 for all others. Likewise, X 2 = 1 for light users and 0 for all others, and X 3 = 1 for medium users and 0 for all others. In analyzing the data, X 1 , X 2 , and X 3 are used to represent all user/nonuser groups.
  • 30. Data Transformation Data conversion Changing the original form of the data to a new format More appropriate data analysis New variables
  • 31. New Variables Collapsing 5-point scale into 3-point scale Collective, average data of respondents and variables Reversal of negative statements Example
  • 32. Collapsing a Five-Point Scale Strongly Agree Agree Neither Agree nor Disagree Disagree Strongly Disagree Strongly Agree/Agree Neither Agree nor Disagree Disagree/Strongly Disagree
  • 33. Descriptive Analysis The transformation of raw data into a form that will make them easy to understand and interpret; rearranging, ordering, and manipulating data to generate descriptive information
  • 34. Tabulation Tabulation - Orderly arrangement of data in a table or other summary format Frequency table Percentages
  • 35. Frequency Table The arrangement of statistical data in a row-and-column format that exhibits the count of responses or observations for each category assigned to a variable
  • 36. Central Tendency Measure of Central Measure of Type of Scale Tendency Dispersion Nominal Mode None Ordinal Median Percentile Interval or ratio Mean Standard deviation
  • 37. Cross-Tabulation A technique for organizing data by groups, categories, or classes, thus facilitating comparisons; a joint frequency distribution of observations on two or more sets of variables Contingency table- The results of a cross-tabulation of two variables, such as survey questions
  • 38. Cross-Tabulation Analyze data by groups or categories Compare differences Contingency table Percentage cross-tabulations
  • 39. Type of Measurement Nominal Two categories More than two categories Frequency table Proportion (percentage) Frequency table Category proportions (percentages) Mode Type of descriptive analysis
  • 40. Type of Measurement Type of descriptive analysis Ordinal Rank order Median
  • 41. Type of Measurement Type of descriptive analysis Interval Arithmetic mean
  • 42. Type of Measurement Type of descriptive analysis Ratio Index numbers Geometric mean
  • 43. You are good students-NOW PRACTICE By Dr. Muhammad Ramzan [email_address] , 03004487844 Edited by Ahsan Khan Eco [email_address] 03008046243