SlideShare a Scribd company logo
By Carmelo Establier SánchezStatistics
Descriptive Statistics
Descriptive vs. InferentialDiscrete data are whole numbers, and are usually a count of objectsMeasured data are continuous and may take any real valueNumerical data are number of any kindCategorical data are made of words (i.e. apple, grapes, bananas…)
Means, medians and modesMedian: The median is the middle number of a set of numbers arranged in numerical order.Mode:The most frequent value in a set.Mean:The sum of all the values of a set divided by the number of values.
VariabilityRange:the length of the smallest interval which contains all the data.It is calculated by subtracting the smallest observation (sample minimum) from the greatest (sample maximum) and provides an indication of statistical dispersion.
VariabilityVariance:The variance is a measure of items are dispersed about their meanIf a random variable X has the expected value (mean) μ = E[X], then the variance of X is given by:
VariabilityThe standard deviation of a statistical population, a data set, or a probability distribution is the square root of its variance
VariabilityRelative variabilityThe relative variability of a ser is its standard deviation divided by its mean.
Linear transformationsA linear transformation of a data set is one where each element is increased by or multiplied by a constantAddition:If a constant C is added to each member of a set, the mean will be C more that it was before.Standard Deviation will not be affected. Range will not be affecter neither.
Linear transformationMultiplication Each member of a set is multiplied by a constant C, then The mean will be C times its value before the constant was applied.The Standard Deviation and Range, will be |c| times its value before it was applied.
Inferential Statistics
Inferential StatisticsInferential Statistics comprises the use of statistics and random sampling to make inferences concerning some unknown aspect of a population. It is distinguished from descriptive statistics.Includes:EstimationPoint estimationInterval estimationPredictionHypothesis testing
EstimationPoint estimation:In statistics, point estimation involves the use of sample data to calculate a single value (known as a statistic) which is to serve as a "best guess" for an unknown (fixed or random) population parameter.
EstimationInterval estimation:It is the use of sample data to calculate an interval of possible (or probable) values of an unknown population parameter, in contrast to point estimation, which is a single number.
Hypothesis testingWhilst all pieces of quantitative research have some dilemma, issue or problem that they are trying to investigate, the focus in hypothesis testing is to find ways to structure these in such a way that we can test them effectively. Typically, it is important to:1. Define the research hypothesis and set the parameters for the study. 2. Set out the null and alternative hypothesis (or more than one hypothesis; in other words, a number of hypotheses). 3. Explain how you are going measure. What you are studying and set out the variables to be studied. 4. Set the significance level. 5. Make a one- or two-tailed prediction. 6. Determine whether the distribution that you are studying is normal (this has implications for the types of statistical tests that you can run on your data). 7. Select an appropriate statistical test based on the variables you have defined and whether the distribution is normal or not. 8. Run the statistical tests on your data and interpret the output. 9. Accept or reject the null hypothesis.
PredictionPrediction or Predictive Inference:It is an interpretation of probability that emphasizes the prediction of future observations based on past observations.
Regression
RegressionOr linear regression refers to any approach to modeling the relationship between one or more variables denoted y and one or more variables denoted X, such that the model depends linearly on the unknown parameters to be estimated from the data. Such a model is called a "linear model." Most commonly, linear regression refers to a model in which the conditional mean of y given the value of X is an affine function of X. Less commonly, linear regression could refer to a model in which the median, or some other quantile of the conditional distribution of y given X is expressed as a linear function of X. Like all forms of regression analysis, linear regression focuses on the conditional probability distribution of y given X, rather than on the joint probability distribution of y and X, which is the domain of multivariate analysis.
Ad

More Related Content

What's hot (18)

Factor Analysis in Research
Factor Analysis in ResearchFactor Analysis in Research
Factor Analysis in Research
Qasim Raza
 
Statistical Analysis Overview
Statistical Analysis OverviewStatistical Analysis Overview
Statistical Analysis Overview
Ecumene
 
3.5 Exploratory Data Analysis
3.5 Exploratory Data Analysis3.5 Exploratory Data Analysis
3.5 Exploratory Data Analysis
mlong24
 
Exploratory data analysis project
Exploratory data analysis project Exploratory data analysis project
Exploratory data analysis project
BabatundeSogunro
 
Inferential Statistics
Inferential StatisticsInferential Statistics
Inferential Statistics
Neny Isharyanti
 
Statistical inference 2
Statistical inference 2Statistical inference 2
Statistical inference 2
safi Ullah
 
Basics of Educational Statistics (Inferential statistics)
Basics of Educational Statistics (Inferential statistics)Basics of Educational Statistics (Inferential statistics)
Basics of Educational Statistics (Inferential statistics)
HennaAnsari
 
Descriptive Statistics
Descriptive StatisticsDescriptive Statistics
Descriptive Statistics
CIToolkit
 
Statistical analysis and interpretation
Statistical analysis and interpretationStatistical analysis and interpretation
Statistical analysis and interpretation
Dave Marcial
 
Statistical treatment and data processing copy
Statistical treatment and data processing   copyStatistical treatment and data processing   copy
Statistical treatment and data processing copy
SWEET PEARL GAMAYON
 
Descriptive & inferential statistics presentation 2
Descriptive & inferential statistics presentation 2Descriptive & inferential statistics presentation 2
Descriptive & inferential statistics presentation 2
Angela Davidson
 
Properties of estimators (blue)
Properties of estimators (blue)Properties of estimators (blue)
Properties of estimators (blue)
Kshitiz Gupta
 
Statistics for data science
Statistics for data science Statistics for data science
Statistics for data science
zekeLabs Technologies
 
Confirmatory factor analysis (cfa)
Confirmatory factor analysis (cfa)Confirmatory factor analysis (cfa)
Confirmatory factor analysis (cfa)
HennaAnsari
 
Malimu descriptive statistics.
Malimu descriptive statistics.Malimu descriptive statistics.
Malimu descriptive statistics.
Miharbi Ignasm
 
Statistics
StatisticsStatistics
Statistics
Lorena Rodríguez
 
Exploratory data analysis
Exploratory data analysisExploratory data analysis
Exploratory data analysis
gokulprasath06
 
Data Analysis and Statistics
Data Analysis and StatisticsData Analysis and Statistics
Data Analysis and Statistics
T.S. Lim
 
Factor Analysis in Research
Factor Analysis in ResearchFactor Analysis in Research
Factor Analysis in Research
Qasim Raza
 
Statistical Analysis Overview
Statistical Analysis OverviewStatistical Analysis Overview
Statistical Analysis Overview
Ecumene
 
3.5 Exploratory Data Analysis
3.5 Exploratory Data Analysis3.5 Exploratory Data Analysis
3.5 Exploratory Data Analysis
mlong24
 
Exploratory data analysis project
Exploratory data analysis project Exploratory data analysis project
Exploratory data analysis project
BabatundeSogunro
 
Statistical inference 2
Statistical inference 2Statistical inference 2
Statistical inference 2
safi Ullah
 
Basics of Educational Statistics (Inferential statistics)
Basics of Educational Statistics (Inferential statistics)Basics of Educational Statistics (Inferential statistics)
Basics of Educational Statistics (Inferential statistics)
HennaAnsari
 
Descriptive Statistics
Descriptive StatisticsDescriptive Statistics
Descriptive Statistics
CIToolkit
 
Statistical analysis and interpretation
Statistical analysis and interpretationStatistical analysis and interpretation
Statistical analysis and interpretation
Dave Marcial
 
Statistical treatment and data processing copy
Statistical treatment and data processing   copyStatistical treatment and data processing   copy
Statistical treatment and data processing copy
SWEET PEARL GAMAYON
 
Descriptive & inferential statistics presentation 2
Descriptive & inferential statistics presentation 2Descriptive & inferential statistics presentation 2
Descriptive & inferential statistics presentation 2
Angela Davidson
 
Properties of estimators (blue)
Properties of estimators (blue)Properties of estimators (blue)
Properties of estimators (blue)
Kshitiz Gupta
 
Confirmatory factor analysis (cfa)
Confirmatory factor analysis (cfa)Confirmatory factor analysis (cfa)
Confirmatory factor analysis (cfa)
HennaAnsari
 
Malimu descriptive statistics.
Malimu descriptive statistics.Malimu descriptive statistics.
Malimu descriptive statistics.
Miharbi Ignasm
 
Exploratory data analysis
Exploratory data analysisExploratory data analysis
Exploratory data analysis
gokulprasath06
 
Data Analysis and Statistics
Data Analysis and StatisticsData Analysis and Statistics
Data Analysis and Statistics
T.S. Lim
 

Viewers also liked (15)

Lego: A brick system build by scala
Lego: A brick system build by scalaLego: A brick system build by scala
Lego: A brick system build by scala
lunfu zhong
 
Real world scala
Real world scalaReal world scala
Real world scala
lunfu zhong
 
Unique Opportunity
Unique OpportunityUnique Opportunity
Unique Opportunity
mvtbiz
 
Engadget Chinese iPhone App 2010 (Sky Chen)
Engadget Chinese iPhone App 2010 (Sky Chen)Engadget Chinese iPhone App 2010 (Sky Chen)
Engadget Chinese iPhone App 2010 (Sky Chen)
Sky Chen
 
วิจัยในชั้นเรียน
วิจัยในชั้นเรียนวิจัยในชั้นเรียน
วิจัยในชั้นเรียน
Ongkharak
 
Resume Updated
Resume UpdatedResume Updated
Resume Updated
guest34635e
 
PSG Healthcare App Solution
PSG Healthcare App SolutionPSG Healthcare App Solution
PSG Healthcare App Solution
Sky Chen
 
Automated Video Marketing Systems
Automated Video Marketing SystemsAutomated Video Marketing Systems
Automated Video Marketing Systems
Sister Technologies
 
Statistics
StatisticsStatistics
Statistics
Carmelo Establier
 
房地产政策
房地产政策房地产政策
房地产政策
momocat0822
 
Automated Video Marketing System & Video SEO - Automotive & Real Estate Solut...
Automated Video Marketing System & Video SEO - Automotive & Real Estate Solut...Automated Video Marketing System & Video SEO - Automotive & Real Estate Solut...
Automated Video Marketing System & Video SEO - Automotive & Real Estate Solut...
Sister Technologies
 
QA System Presentation
QA System PresentationQA System Presentation
QA System Presentation
Sky Chen
 
วิจัยในชั้นเรียน
วิจัยในชั้นเรียนวิจัยในชั้นเรียน
วิจัยในชั้นเรียน
Ongkharak
 
Fashion & Motion: Telling Your Story Through Film_LJFFF
Fashion & Motion: Telling Your Story Through Film_LJFFFFashion & Motion: Telling Your Story Through Film_LJFFF
Fashion & Motion: Telling Your Story Through Film_LJFFF
Christie Media/Emota
 
Housemd
HousemdHousemd
Housemd
lunfu zhong
 
Lego: A brick system build by scala
Lego: A brick system build by scalaLego: A brick system build by scala
Lego: A brick system build by scala
lunfu zhong
 
Real world scala
Real world scalaReal world scala
Real world scala
lunfu zhong
 
Unique Opportunity
Unique OpportunityUnique Opportunity
Unique Opportunity
mvtbiz
 
Engadget Chinese iPhone App 2010 (Sky Chen)
Engadget Chinese iPhone App 2010 (Sky Chen)Engadget Chinese iPhone App 2010 (Sky Chen)
Engadget Chinese iPhone App 2010 (Sky Chen)
Sky Chen
 
วิจัยในชั้นเรียน
วิจัยในชั้นเรียนวิจัยในชั้นเรียน
วิจัยในชั้นเรียน
Ongkharak
 
PSG Healthcare App Solution
PSG Healthcare App SolutionPSG Healthcare App Solution
PSG Healthcare App Solution
Sky Chen
 
Automated Video Marketing Systems
Automated Video Marketing SystemsAutomated Video Marketing Systems
Automated Video Marketing Systems
Sister Technologies
 
Automated Video Marketing System & Video SEO - Automotive & Real Estate Solut...
Automated Video Marketing System & Video SEO - Automotive & Real Estate Solut...Automated Video Marketing System & Video SEO - Automotive & Real Estate Solut...
Automated Video Marketing System & Video SEO - Automotive & Real Estate Solut...
Sister Technologies
 
QA System Presentation
QA System PresentationQA System Presentation
QA System Presentation
Sky Chen
 
วิจัยในชั้นเรียน
วิจัยในชั้นเรียนวิจัยในชั้นเรียน
วิจัยในชั้นเรียน
Ongkharak
 
Fashion & Motion: Telling Your Story Through Film_LJFFF
Fashion & Motion: Telling Your Story Through Film_LJFFFFashion & Motion: Telling Your Story Through Film_LJFFF
Fashion & Motion: Telling Your Story Through Film_LJFFF
Christie Media/Emota
 
Ad

Similar to Statistics (20)

abdi research ppt.pptx
abdi research ppt.pptxabdi research ppt.pptx
abdi research ppt.pptx
AbdetaBirhanu
 
statistical analysis, analysis of statistical mechanism
statistical analysis, analysis of statistical mechanismstatistical analysis, analysis of statistical mechanism
statistical analysis, analysis of statistical mechanism
Sanjay100591
 
MANS_PRESENTATION[1] hgfhdsgfkdfkjdfjd.pptx
MANS_PRESENTATION[1] hgfhdsgfkdfkjdfjd.pptxMANS_PRESENTATION[1] hgfhdsgfkdfkjdfjd.pptx
MANS_PRESENTATION[1] hgfhdsgfkdfkjdfjd.pptx
moribasahrkondeh0
 
MANS_PRESENTATION[1] hgfhdsgfkdfkjdfjd.pptx
MANS_PRESENTATION[1] hgfhdsgfkdfkjdfjd.pptxMANS_PRESENTATION[1] hgfhdsgfkdfkjdfjd.pptx
MANS_PRESENTATION[1] hgfhdsgfkdfkjdfjd.pptx
moribasahrkondeh0
 
Data science
Data scienceData science
Data science
Rakibul Hasan Pranto
 
Estimation in statistics
Estimation in statisticsEstimation in statistics
Estimation in statistics
Rabea Jamal
 
Descriptive Analysis.pptx
Descriptive Analysis.pptxDescriptive Analysis.pptx
Descriptive Analysis.pptx
Parveen Vashisth
 
Bgy5901
Bgy5901Bgy5901
Bgy5901
Noor Lela Yahaya
 
Basics of biostatistic
Basics of biostatisticBasics of biostatistic
Basics of biostatistic
NeurologyKota
 
Planning-Data-Analysis-CHOOSING-STATISTICAL-TOOL.docx
Planning-Data-Analysis-CHOOSING-STATISTICAL-TOOL.docxPlanning-Data-Analysis-CHOOSING-STATISTICAL-TOOL.docx
Planning-Data-Analysis-CHOOSING-STATISTICAL-TOOL.docx
emmanuelangelof
 
Descriptive and Inferential Statistics.docx
Descriptive and Inferential Statistics.docxDescriptive and Inferential Statistics.docx
Descriptive and Inferential Statistics.docx
RobertLogrono
 
Review of Basic Statistics and Terminology
Review of Basic Statistics and TerminologyReview of Basic Statistics and Terminology
Review of Basic Statistics and Terminology
aswhite
 
Quantitative Data AnalysisReliability Analysis (Cronbach Alpha) Common Method...
Quantitative Data AnalysisReliability Analysis (Cronbach Alpha) Common Method...Quantitative Data AnalysisReliability Analysis (Cronbach Alpha) Common Method...
Quantitative Data AnalysisReliability Analysis (Cronbach Alpha) Common Method...
2023240532
 
Edison S Statistics
Edison S StatisticsEdison S Statistics
Edison S Statistics
teresa_soto
 
A review of statistics
A review of statisticsA review of statistics
A review of statistics
edisonre
 
Edisons Statistics
Edisons StatisticsEdisons Statistics
Edisons Statistics
teresa_soto
 
statistical analysis.pptx
statistical analysis.pptxstatistical analysis.pptx
statistical analysis.pptx
hayatalakoum1
 
Statistics pres 3.31.2014
Statistics pres 3.31.2014Statistics pres 3.31.2014
Statistics pres 3.31.2014
tjcarter
 
76a15ed521b7679e372aab35412ab78ab583436a-1602816156135.pdf
76a15ed521b7679e372aab35412ab78ab583436a-1602816156135.pdf76a15ed521b7679e372aab35412ab78ab583436a-1602816156135.pdf
76a15ed521b7679e372aab35412ab78ab583436a-1602816156135.pdf
triwicak1
 
STATISTICAL PROCEDURES (Discriptive Statistics).pptx
STATISTICAL PROCEDURES (Discriptive Statistics).pptxSTATISTICAL PROCEDURES (Discriptive Statistics).pptx
STATISTICAL PROCEDURES (Discriptive Statistics).pptx
MuhammadNafees42
 
abdi research ppt.pptx
abdi research ppt.pptxabdi research ppt.pptx
abdi research ppt.pptx
AbdetaBirhanu
 
statistical analysis, analysis of statistical mechanism
statistical analysis, analysis of statistical mechanismstatistical analysis, analysis of statistical mechanism
statistical analysis, analysis of statistical mechanism
Sanjay100591
 
MANS_PRESENTATION[1] hgfhdsgfkdfkjdfjd.pptx
MANS_PRESENTATION[1] hgfhdsgfkdfkjdfjd.pptxMANS_PRESENTATION[1] hgfhdsgfkdfkjdfjd.pptx
MANS_PRESENTATION[1] hgfhdsgfkdfkjdfjd.pptx
moribasahrkondeh0
 
MANS_PRESENTATION[1] hgfhdsgfkdfkjdfjd.pptx
MANS_PRESENTATION[1] hgfhdsgfkdfkjdfjd.pptxMANS_PRESENTATION[1] hgfhdsgfkdfkjdfjd.pptx
MANS_PRESENTATION[1] hgfhdsgfkdfkjdfjd.pptx
moribasahrkondeh0
 
Estimation in statistics
Estimation in statisticsEstimation in statistics
Estimation in statistics
Rabea Jamal
 
Basics of biostatistic
Basics of biostatisticBasics of biostatistic
Basics of biostatistic
NeurologyKota
 
Planning-Data-Analysis-CHOOSING-STATISTICAL-TOOL.docx
Planning-Data-Analysis-CHOOSING-STATISTICAL-TOOL.docxPlanning-Data-Analysis-CHOOSING-STATISTICAL-TOOL.docx
Planning-Data-Analysis-CHOOSING-STATISTICAL-TOOL.docx
emmanuelangelof
 
Descriptive and Inferential Statistics.docx
Descriptive and Inferential Statistics.docxDescriptive and Inferential Statistics.docx
Descriptive and Inferential Statistics.docx
RobertLogrono
 
Review of Basic Statistics and Terminology
Review of Basic Statistics and TerminologyReview of Basic Statistics and Terminology
Review of Basic Statistics and Terminology
aswhite
 
Quantitative Data AnalysisReliability Analysis (Cronbach Alpha) Common Method...
Quantitative Data AnalysisReliability Analysis (Cronbach Alpha) Common Method...Quantitative Data AnalysisReliability Analysis (Cronbach Alpha) Common Method...
Quantitative Data AnalysisReliability Analysis (Cronbach Alpha) Common Method...
2023240532
 
Edison S Statistics
Edison S StatisticsEdison S Statistics
Edison S Statistics
teresa_soto
 
A review of statistics
A review of statisticsA review of statistics
A review of statistics
edisonre
 
Edisons Statistics
Edisons StatisticsEdisons Statistics
Edisons Statistics
teresa_soto
 
statistical analysis.pptx
statistical analysis.pptxstatistical analysis.pptx
statistical analysis.pptx
hayatalakoum1
 
Statistics pres 3.31.2014
Statistics pres 3.31.2014Statistics pres 3.31.2014
Statistics pres 3.31.2014
tjcarter
 
76a15ed521b7679e372aab35412ab78ab583436a-1602816156135.pdf
76a15ed521b7679e372aab35412ab78ab583436a-1602816156135.pdf76a15ed521b7679e372aab35412ab78ab583436a-1602816156135.pdf
76a15ed521b7679e372aab35412ab78ab583436a-1602816156135.pdf
triwicak1
 
STATISTICAL PROCEDURES (Discriptive Statistics).pptx
STATISTICAL PROCEDURES (Discriptive Statistics).pptxSTATISTICAL PROCEDURES (Discriptive Statistics).pptx
STATISTICAL PROCEDURES (Discriptive Statistics).pptx
MuhammadNafees42
 
Ad

Recently uploaded (20)

fennec fox optimization algorithm for optimal solution
fennec fox optimization algorithm for optimal solutionfennec fox optimization algorithm for optimal solution
fennec fox optimization algorithm for optimal solution
shallal2
 
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
 
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
 
Transcript: #StandardsGoals for 2025: Standards & certification roundup - Tec...
Transcript: #StandardsGoals for 2025: Standards & certification roundup - Tec...Transcript: #StandardsGoals for 2025: Standards & certification roundup - Tec...
Transcript: #StandardsGoals for 2025: Standards & certification roundup - Tec...
BookNet Canada
 
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
 
Web and Graphics Designing Training in Rajpura
Web and Graphics Designing Training in RajpuraWeb and Graphics Designing Training in Rajpura
Web and Graphics Designing Training in Rajpura
Erginous Technology
 
How analogue intelligence complements AI
How analogue intelligence complements AIHow analogue intelligence complements AI
How analogue intelligence complements AI
Paul Rowe
 
The No-Code Way to Build a Marketing Team with One AI Agent (Download the n8n...
The No-Code Way to Build a Marketing Team with One AI Agent (Download the n8n...The No-Code Way to Build a Marketing Team with One AI Agent (Download the n8n...
The No-Code Way to Build a Marketing Team with One AI Agent (Download the n8n...
SOFTTECHHUB
 
AI Agents at Work: UiPath, Maestro & the Future of Documents
AI Agents at Work: UiPath, Maestro & the Future of DocumentsAI Agents at Work: UiPath, Maestro & the Future of Documents
AI Agents at Work: UiPath, Maestro & the Future of Documents
UiPathCommunity
 
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
 
Generative Artificial Intelligence (GenAI) in Business
Generative Artificial Intelligence (GenAI) in BusinessGenerative Artificial Intelligence (GenAI) in Business
Generative Artificial Intelligence (GenAI) in Business
Dr. Tathagat Varma
 
Designing Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep Dive
Designing Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep DiveDesigning Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep Dive
Designing Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep Dive
ScyllaDB
 
Canadian book publishing: Insights from the latest salary survey - Tech Forum...
Canadian book publishing: Insights from the latest salary survey - Tech Forum...Canadian book publishing: Insights from the latest salary survey - Tech Forum...
Canadian book publishing: Insights from the latest salary survey - Tech Forum...
BookNet Canada
 
Cybersecurity Identity and Access Solutions using Azure AD
Cybersecurity Identity and Access Solutions using Azure ADCybersecurity Identity and Access Solutions using Azure AD
Cybersecurity Identity and Access Solutions using Azure AD
VICTOR MAESTRE RAMIREZ
 
UiPath Automation Suite – Cas d'usage d'une NGO internationale basée à Genève
UiPath Automation Suite – Cas d'usage d'une NGO internationale basée à GenèveUiPath Automation Suite – Cas d'usage d'une NGO internationale basée à Genève
UiPath Automation Suite – Cas d'usage d'une NGO internationale basée à Genève
UiPathCommunity
 
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
 
Foundations of Cybersecurity - Google Certificate
Foundations of Cybersecurity - Google CertificateFoundations of Cybersecurity - Google Certificate
Foundations of Cybersecurity - Google Certificate
VICTOR MAESTRE RAMIREZ
 
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
 
Play It Safe: Manage Security Risks - Google Certificate
Play It Safe: Manage Security Risks - Google CertificatePlay It Safe: Manage Security Risks - Google Certificate
Play It Safe: Manage Security Risks - Google Certificate
VICTOR MAESTRE RAMIREZ
 
Viam product demo_ Deploying and scaling AI with hardware.pdf
Viam product demo_ Deploying and scaling AI with hardware.pdfViam product demo_ Deploying and scaling AI with hardware.pdf
Viam product demo_ Deploying and scaling AI with hardware.pdf
camilalamoratta
 
fennec fox optimization algorithm for optimal solution
fennec fox optimization algorithm for optimal solutionfennec fox optimization algorithm for optimal solution
fennec fox optimization algorithm for optimal solution
shallal2
 
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
 
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
 
Transcript: #StandardsGoals for 2025: Standards & certification roundup - Tec...
Transcript: #StandardsGoals for 2025: Standards & certification roundup - Tec...Transcript: #StandardsGoals for 2025: Standards & certification roundup - Tec...
Transcript: #StandardsGoals for 2025: Standards & certification roundup - Tec...
BookNet Canada
 
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
 
Web and Graphics Designing Training in Rajpura
Web and Graphics Designing Training in RajpuraWeb and Graphics Designing Training in Rajpura
Web and Graphics Designing Training in Rajpura
Erginous Technology
 
How analogue intelligence complements AI
How analogue intelligence complements AIHow analogue intelligence complements AI
How analogue intelligence complements AI
Paul Rowe
 
The No-Code Way to Build a Marketing Team with One AI Agent (Download the n8n...
The No-Code Way to Build a Marketing Team with One AI Agent (Download the n8n...The No-Code Way to Build a Marketing Team with One AI Agent (Download the n8n...
The No-Code Way to Build a Marketing Team with One AI Agent (Download the n8n...
SOFTTECHHUB
 
AI Agents at Work: UiPath, Maestro & the Future of Documents
AI Agents at Work: UiPath, Maestro & the Future of DocumentsAI Agents at Work: UiPath, Maestro & the Future of Documents
AI Agents at Work: UiPath, Maestro & the Future of Documents
UiPathCommunity
 
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
 
Generative Artificial Intelligence (GenAI) in Business
Generative Artificial Intelligence (GenAI) in BusinessGenerative Artificial Intelligence (GenAI) in Business
Generative Artificial Intelligence (GenAI) in Business
Dr. Tathagat Varma
 
Designing Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep Dive
Designing Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep DiveDesigning Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep Dive
Designing Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep Dive
ScyllaDB
 
Canadian book publishing: Insights from the latest salary survey - Tech Forum...
Canadian book publishing: Insights from the latest salary survey - Tech Forum...Canadian book publishing: Insights from the latest salary survey - Tech Forum...
Canadian book publishing: Insights from the latest salary survey - Tech Forum...
BookNet Canada
 
Cybersecurity Identity and Access Solutions using Azure AD
Cybersecurity Identity and Access Solutions using Azure ADCybersecurity Identity and Access Solutions using Azure AD
Cybersecurity Identity and Access Solutions using Azure AD
VICTOR MAESTRE RAMIREZ
 
UiPath Automation Suite – Cas d'usage d'une NGO internationale basée à Genève
UiPath Automation Suite – Cas d'usage d'une NGO internationale basée à GenèveUiPath Automation Suite – Cas d'usage d'une NGO internationale basée à Genève
UiPath Automation Suite – Cas d'usage d'une NGO internationale basée à Genève
UiPathCommunity
 
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
 
Foundations of Cybersecurity - Google Certificate
Foundations of Cybersecurity - Google CertificateFoundations of Cybersecurity - Google Certificate
Foundations of Cybersecurity - Google Certificate
VICTOR MAESTRE RAMIREZ
 
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
 
Play It Safe: Manage Security Risks - Google Certificate
Play It Safe: Manage Security Risks - Google CertificatePlay It Safe: Manage Security Risks - Google Certificate
Play It Safe: Manage Security Risks - Google Certificate
VICTOR MAESTRE RAMIREZ
 
Viam product demo_ Deploying and scaling AI with hardware.pdf
Viam product demo_ Deploying and scaling AI with hardware.pdfViam product demo_ Deploying and scaling AI with hardware.pdf
Viam product demo_ Deploying and scaling AI with hardware.pdf
camilalamoratta
 

Statistics

  • 1. By Carmelo Establier SánchezStatistics
  • 3. Descriptive vs. InferentialDiscrete data are whole numbers, and are usually a count of objectsMeasured data are continuous and may take any real valueNumerical data are number of any kindCategorical data are made of words (i.e. apple, grapes, bananas…)
  • 4. Means, medians and modesMedian: The median is the middle number of a set of numbers arranged in numerical order.Mode:The most frequent value in a set.Mean:The sum of all the values of a set divided by the number of values.
  • 5. VariabilityRange:the length of the smallest interval which contains all the data.It is calculated by subtracting the smallest observation (sample minimum) from the greatest (sample maximum) and provides an indication of statistical dispersion.
  • 6. VariabilityVariance:The variance is a measure of items are dispersed about their meanIf a random variable X has the expected value (mean) μ = E[X], then the variance of X is given by:
  • 7. VariabilityThe standard deviation of a statistical population, a data set, or a probability distribution is the square root of its variance
  • 8. VariabilityRelative variabilityThe relative variability of a ser is its standard deviation divided by its mean.
  • 9. Linear transformationsA linear transformation of a data set is one where each element is increased by or multiplied by a constantAddition:If a constant C is added to each member of a set, the mean will be C more that it was before.Standard Deviation will not be affected. Range will not be affecter neither.
  • 10. Linear transformationMultiplication Each member of a set is multiplied by a constant C, then The mean will be C times its value before the constant was applied.The Standard Deviation and Range, will be |c| times its value before it was applied.
  • 12. Inferential StatisticsInferential Statistics comprises the use of statistics and random sampling to make inferences concerning some unknown aspect of a population. It is distinguished from descriptive statistics.Includes:EstimationPoint estimationInterval estimationPredictionHypothesis testing
  • 13. EstimationPoint estimation:In statistics, point estimation involves the use of sample data to calculate a single value (known as a statistic) which is to serve as a "best guess" for an unknown (fixed or random) population parameter.
  • 14. EstimationInterval estimation:It is the use of sample data to calculate an interval of possible (or probable) values of an unknown population parameter, in contrast to point estimation, which is a single number.
  • 15. Hypothesis testingWhilst all pieces of quantitative research have some dilemma, issue or problem that they are trying to investigate, the focus in hypothesis testing is to find ways to structure these in such a way that we can test them effectively. Typically, it is important to:1. Define the research hypothesis and set the parameters for the study. 2. Set out the null and alternative hypothesis (or more than one hypothesis; in other words, a number of hypotheses). 3. Explain how you are going measure. What you are studying and set out the variables to be studied. 4. Set the significance level. 5. Make a one- or two-tailed prediction. 6. Determine whether the distribution that you are studying is normal (this has implications for the types of statistical tests that you can run on your data). 7. Select an appropriate statistical test based on the variables you have defined and whether the distribution is normal or not. 8. Run the statistical tests on your data and interpret the output. 9. Accept or reject the null hypothesis.
  • 16. PredictionPrediction or Predictive Inference:It is an interpretation of probability that emphasizes the prediction of future observations based on past observations.
  • 18. RegressionOr linear regression refers to any approach to modeling the relationship between one or more variables denoted y and one or more variables denoted X, such that the model depends linearly on the unknown parameters to be estimated from the data. Such a model is called a "linear model." Most commonly, linear regression refers to a model in which the conditional mean of y given the value of X is an affine function of X. Less commonly, linear regression could refer to a model in which the median, or some other quantile of the conditional distribution of y given X is expressed as a linear function of X. Like all forms of regression analysis, linear regression focuses on the conditional probability distribution of y given X, rather than on the joint probability distribution of y and X, which is the domain of multivariate analysis.