Suche senden
Hochladen
B409 W11 Sas Collaborative Stats Guide V4.2
•
Als ZIP, PDF herunterladen
•
1 gefällt mir
•
986 views
M
marshalkalra
Folgen
Technologie
Melden
Teilen
Melden
Teilen
1 von 90
Jetzt herunterladen
Empfohlen
Statistics for data science
Statistics for data science
zekeLabs Technologies
Statistical Procedures using SPSSi
Statistical Procedures using SPSSi
Taddesse Kassahun
Data presenatation
Data presenatation
singhdharmendra
Stat11t chapter3
Stat11t chapter3
raylenepotter
060 techniques of_data_analysis
060 techniques of_data_analysis
Nouman Zia
Statistics
Statistics
SMP N 2 Sindang Indramayu
Exploratory data analysis project
Exploratory data analysis project
BabatundeSogunro
Stat11t chapter1
Stat11t chapter1
raylenepotter
Empfohlen
Statistics for data science
Statistics for data science
zekeLabs Technologies
Statistical Procedures using SPSSi
Statistical Procedures using SPSSi
Taddesse Kassahun
Data presenatation
Data presenatation
singhdharmendra
Stat11t chapter3
Stat11t chapter3
raylenepotter
060 techniques of_data_analysis
060 techniques of_data_analysis
Nouman Zia
Statistics
Statistics
SMP N 2 Sindang Indramayu
Exploratory data analysis project
Exploratory data analysis project
BabatundeSogunro
Stat11t chapter1
Stat11t chapter1
raylenepotter
Artificial Intelligence - Data Analysis, Creative & Critical Thinking and AI...
Artificial Intelligence - Data Analysis, Creative & Critical Thinking and AI...
deboshreechatterjee2
Descriptive Statistics - SPSS
Descriptive Statistics - SPSS
Abdelrahman Alkilani
Stat11t alq chapter03
Stat11t alq chapter03
raylenepotter
Applied SPSS for Data Forecasting of Sale Quantity
Applied SPSS for Data Forecasting of Sale Quantity
ijtsrd
Statics for management
Statics for management
parth06
Bbs11 ppt ch02
Bbs11 ppt ch02
Tuul Tuul
"A basic guide to SPSS"
"A basic guide to SPSS"
Bashir7576
PG STAT 531 lecture 1 introduction about statistics and collection, compilati...
PG STAT 531 lecture 1 introduction about statistics and collection, compilati...
Aashish Patel
Bbs11 ppt ch01
Bbs11 ppt ch01
Tuul Tuul
Employees Data Analysis by Applied SPSS
Employees Data Analysis by Applied SPSS
ijtsrd
data analysis techniques and statistical softwares
data analysis techniques and statistical softwares
Dr.ammara khakwani
Spss lecture notes
Spss lecture notes
David mbwiga
Introduction To SPSS
Introduction To SPSS
ThankGod Damion Okpe
Statics for the management
Statics for the management
Rohit Mishra
Uses of SPSS and Excel to analyze data
Uses of SPSS and Excel to analyze data
Kudrat-E- Khoda(Prince)
Evaluation Spss
Evaluation Spss
jackng
Data Visualization
Data Visualization
Marco Torchiano
Using SPSS: A Tutorial
Using SPSS: A Tutorial
Martin Vince Cruz, RPm
Introduction To SPSS
Introduction To SPSS
Phi Jack
Data science 101 statistics overview
Data science 101 statistics overview
Alejandro Gonzalez
Kittens' Story
Kittens' Story
allcreaturessing
我們並非無知
我們並非無知
再添 張
Weitere ähnliche Inhalte
Was ist angesagt?
Artificial Intelligence - Data Analysis, Creative & Critical Thinking and AI...
Artificial Intelligence - Data Analysis, Creative & Critical Thinking and AI...
deboshreechatterjee2
Descriptive Statistics - SPSS
Descriptive Statistics - SPSS
Abdelrahman Alkilani
Stat11t alq chapter03
Stat11t alq chapter03
raylenepotter
Applied SPSS for Data Forecasting of Sale Quantity
Applied SPSS for Data Forecasting of Sale Quantity
ijtsrd
Statics for management
Statics for management
parth06
Bbs11 ppt ch02
Bbs11 ppt ch02
Tuul Tuul
"A basic guide to SPSS"
"A basic guide to SPSS"
Bashir7576
PG STAT 531 lecture 1 introduction about statistics and collection, compilati...
PG STAT 531 lecture 1 introduction about statistics and collection, compilati...
Aashish Patel
Bbs11 ppt ch01
Bbs11 ppt ch01
Tuul Tuul
Employees Data Analysis by Applied SPSS
Employees Data Analysis by Applied SPSS
ijtsrd
data analysis techniques and statistical softwares
data analysis techniques and statistical softwares
Dr.ammara khakwani
Spss lecture notes
Spss lecture notes
David mbwiga
Introduction To SPSS
Introduction To SPSS
ThankGod Damion Okpe
Statics for the management
Statics for the management
Rohit Mishra
Uses of SPSS and Excel to analyze data
Uses of SPSS and Excel to analyze data
Kudrat-E- Khoda(Prince)
Evaluation Spss
Evaluation Spss
jackng
Data Visualization
Data Visualization
Marco Torchiano
Using SPSS: A Tutorial
Using SPSS: A Tutorial
Martin Vince Cruz, RPm
Introduction To SPSS
Introduction To SPSS
Phi Jack
Data science 101 statistics overview
Data science 101 statistics overview
Alejandro Gonzalez
Was ist angesagt?
(20)
Artificial Intelligence - Data Analysis, Creative & Critical Thinking and AI...
Artificial Intelligence - Data Analysis, Creative & Critical Thinking and AI...
Descriptive Statistics - SPSS
Descriptive Statistics - SPSS
Stat11t alq chapter03
Stat11t alq chapter03
Applied SPSS for Data Forecasting of Sale Quantity
Applied SPSS for Data Forecasting of Sale Quantity
Statics for management
Statics for management
Bbs11 ppt ch02
Bbs11 ppt ch02
"A basic guide to SPSS"
"A basic guide to SPSS"
PG STAT 531 lecture 1 introduction about statistics and collection, compilati...
PG STAT 531 lecture 1 introduction about statistics and collection, compilati...
Bbs11 ppt ch01
Bbs11 ppt ch01
Employees Data Analysis by Applied SPSS
Employees Data Analysis by Applied SPSS
data analysis techniques and statistical softwares
data analysis techniques and statistical softwares
Spss lecture notes
Spss lecture notes
Introduction To SPSS
Introduction To SPSS
Statics for the management
Statics for the management
Uses of SPSS and Excel to analyze data
Uses of SPSS and Excel to analyze data
Evaluation Spss
Evaluation Spss
Data Visualization
Data Visualization
Using SPSS: A Tutorial
Using SPSS: A Tutorial
Introduction To SPSS
Introduction To SPSS
Data science 101 statistics overview
Data science 101 statistics overview
Andere mochten auch
Kittens' Story
Kittens' Story
allcreaturessing
我們並非無知
我們並非無知
再添 張
Blogging presentation
Blogging presentation
Traci Van
Khusnia
Khusnia
zuhrotulkhusnia
Avonmore super milk
Avonmore super milk
Cara O'Doherty
Ideate
Ideate
Jonathan Anaya Martinez
Att tillgängliggöra kulturarv
Att tillgängliggöra kulturarv
MagnusCedergren
Blogging presentation
Blogging presentation
Traci Van
ความรู้เบื้องต้นเกี่ยวกับผู้บริหาร
ความรู้เบื้องต้นเกี่ยวกับผู้บริหาร
Thitiya Janpeng
Programa Usos del Temps
Programa Usos del Temps
fem talent
05 moment
05 moment
Dr.Jayaprakash jeyaraju
A nimation project
A nimation project
prasathk313
Food
Food
Carmen Eugenia Maza Vergara
Relative clauses
Relative clauses
Carmen Eugenia Maza Vergara
Teens 2 2012 animals
Teens 2 2012 animals
Carmen Eugenia Maza Vergara
Blogging presentation
Blogging presentation
Traci Van
Finding neverland june 14 2011
Finding neverland june 14 2011
Laura Munroe
Unit 5 and 6
Unit 5 and 6
Carmen Eugenia Maza Vergara
Pôster Digital
Pôster Digital
Elaine Zaggo
08 chapter 1 (1)
08 chapter 1 (1)
Dr.Jayaprakash jeyaraju
Andere mochten auch
(20)
Kittens' Story
Kittens' Story
我們並非無知
我們並非無知
Blogging presentation
Blogging presentation
Khusnia
Khusnia
Avonmore super milk
Avonmore super milk
Ideate
Ideate
Att tillgängliggöra kulturarv
Att tillgängliggöra kulturarv
Blogging presentation
Blogging presentation
ความรู้เบื้องต้นเกี่ยวกับผู้บริหาร
ความรู้เบื้องต้นเกี่ยวกับผู้บริหาร
Programa Usos del Temps
Programa Usos del Temps
05 moment
05 moment
A nimation project
A nimation project
Food
Food
Relative clauses
Relative clauses
Teens 2 2012 animals
Teens 2 2012 animals
Blogging presentation
Blogging presentation
Finding neverland june 14 2011
Finding neverland june 14 2011
Unit 5 and 6
Unit 5 and 6
Pôster Digital
Pôster Digital
08 chapter 1 (1)
08 chapter 1 (1)
Ähnlich wie B409 W11 Sas Collaborative Stats Guide V4.2
Statistical ProcessesCan descriptive statistical processes b.docx
Statistical ProcessesCan descriptive statistical processes b.docx
darwinming1
Analyzing quantitative data
Analyzing quantitative data
Bing Villamor
Data Science - Part III - EDA & Model Selection
Data Science - Part III - EDA & Model Selection
Derek Kane
These is info only ill be attaching the questions work CJ 301 – .docx
These is info only ill be attaching the questions work CJ 301 – .docx
meagantobias
Computing Descriptive Statistics © 2014 Argos.docx
Computing Descriptive Statistics © 2014 Argos.docx
aryan532920
Computing Descriptive Statistics © 2014 Argos.docx
Computing Descriptive Statistics © 2014 Argos.docx
AASTHA76
Krupa rm
Krupa rm
Krupa Mehta
R for statistics session 1
R for statistics session 1
Ashwini Mathur
Unit 2_ Descriptive Analytics for MBA .pptx
Unit 2_ Descriptive Analytics for MBA .pptx
JANNU VINAY
UNIT - 5 : 20ACS04 – PROBLEM SOLVING AND PROGRAMMING USING PYTHON
UNIT - 5 : 20ACS04 – PROBLEM SOLVING AND PROGRAMMING USING PYTHON
Nandakumar P
Statistics for ess
Statistics for ess
Michael Smith
Statistical-Process-Control-Analysis-Unraveled_updated210
Statistical-Process-Control-Analysis-Unraveled_updated210
pbaxter
STATISTICAL PROCEDURES (Discriptive Statistics).pptx
STATISTICAL PROCEDURES (Discriptive Statistics).pptx
MuhammadNafees42
Statistics for data scientists
Statistics for data scientists
Ajay Ohri
Ders 1 mean mod media st dev.pptx
Ders 1 mean mod media st dev.pptx
Ergin Akalpler
7 qc tools
7 qc tools
kmsonam
1234
1234
Komal Patil
Measures of central tendency
Measures of central tendency
renukamorani143
Exploratory Data Analysis - Satyajit.pdf
Exploratory Data Analysis - Satyajit.pdf
AmmarAhmedSiddiqui2
MMW (Data Management)-Part 1 for ULO 2 (1).pptx
MMW (Data Management)-Part 1 for ULO 2 (1).pptx
PETTIROSETALISIC
Ähnlich wie B409 W11 Sas Collaborative Stats Guide V4.2
(20)
Statistical ProcessesCan descriptive statistical processes b.docx
Statistical ProcessesCan descriptive statistical processes b.docx
Analyzing quantitative data
Analyzing quantitative data
Data Science - Part III - EDA & Model Selection
Data Science - Part III - EDA & Model Selection
These is info only ill be attaching the questions work CJ 301 – .docx
These is info only ill be attaching the questions work CJ 301 – .docx
Computing Descriptive Statistics © 2014 Argos.docx
Computing Descriptive Statistics © 2014 Argos.docx
Computing Descriptive Statistics © 2014 Argos.docx
Computing Descriptive Statistics © 2014 Argos.docx
Krupa rm
Krupa rm
R for statistics session 1
R for statistics session 1
Unit 2_ Descriptive Analytics for MBA .pptx
Unit 2_ Descriptive Analytics for MBA .pptx
UNIT - 5 : 20ACS04 – PROBLEM SOLVING AND PROGRAMMING USING PYTHON
UNIT - 5 : 20ACS04 – PROBLEM SOLVING AND PROGRAMMING USING PYTHON
Statistics for ess
Statistics for ess
Statistical-Process-Control-Analysis-Unraveled_updated210
Statistical-Process-Control-Analysis-Unraveled_updated210
STATISTICAL PROCEDURES (Discriptive Statistics).pptx
STATISTICAL PROCEDURES (Discriptive Statistics).pptx
Statistics for data scientists
Statistics for data scientists
Ders 1 mean mod media st dev.pptx
Ders 1 mean mod media st dev.pptx
7 qc tools
7 qc tools
1234
1234
Measures of central tendency
Measures of central tendency
Exploratory Data Analysis - Satyajit.pdf
Exploratory Data Analysis - Satyajit.pdf
MMW (Data Management)-Part 1 for ULO 2 (1).pptx
MMW (Data Management)-Part 1 for ULO 2 (1).pptx
Kürzlich hochgeladen
DBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor Presentation
Dropbox
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Victor Rentea
[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdf
Sandro Moreira
Exploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with Milvus
Zilliz
WSO2's API Vision: Unifying Control, Empowering Developers
WSO2's API Vision: Unifying Control, Empowering Developers
WSO2
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
Zilliz
Architecting Cloud Native Applications
Architecting Cloud Native Applications
WSO2
AI in Action: Real World Use Cases by Anitaraj
AI in Action: Real World Use Cases by Anitaraj
AnitaRaj43
Platformless Horizons for Digital Adaptability
Platformless Horizons for Digital Adaptability
WSO2
ICT role in 21st century education and its challenges
ICT role in 21st century education and its challenges
rafiqahmad00786416
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
ThousandEyes
JohnPollard-hybrid-app-RailsConf2024.pptx
JohnPollard-hybrid-app-RailsConf2024.pptx
JohnPollard37
Vector Search -An Introduction in Oracle Database 23ai.pptx
Vector Search -An Introduction in Oracle Database 23ai.pptx
Remote DBA Services
CNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In Pakistan
danishmna97
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
apidays
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Jeffrey Haguewood
Six Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal Ontology
johnbeverley2021
Spring Boot vs Quarkus the ultimate battle - DevoxxUK
Spring Boot vs Quarkus the ultimate battle - DevoxxUK
Jago de Vreede
presentation ICT roal in 21st century education
presentation ICT roal in 21st century education
jfdjdjcjdnsjd
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc
Kürzlich hochgeladen
(20)
DBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor Presentation
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdf
Exploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with Milvus
WSO2's API Vision: Unifying Control, Empowering Developers
WSO2's API Vision: Unifying Control, Empowering Developers
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
Architecting Cloud Native Applications
Architecting Cloud Native Applications
AI in Action: Real World Use Cases by Anitaraj
AI in Action: Real World Use Cases by Anitaraj
Platformless Horizons for Digital Adaptability
Platformless Horizons for Digital Adaptability
ICT role in 21st century education and its challenges
ICT role in 21st century education and its challenges
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
JohnPollard-hybrid-app-RailsConf2024.pptx
JohnPollard-hybrid-app-RailsConf2024.pptx
Vector Search -An Introduction in Oracle Database 23ai.pptx
Vector Search -An Introduction in Oracle Database 23ai.pptx
CNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In Pakistan
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Six Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal Ontology
Spring Boot vs Quarkus the ultimate battle - DevoxxUK
Spring Boot vs Quarkus the ultimate battle - DevoxxUK
presentation ICT roal in 21st century education
presentation ICT roal in 21st century education
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
B409 W11 Sas Collaborative Stats Guide V4.2
1.
2.
Likelihood of certain
candidates to be elected
3.
Reactions to certain
new products
4.
Survey response rate
reliability
5.
6.
7.
State the null
hypothesis
8.
Gather the data.
9.
Compute the regression
equation.
10.
Examine tests of
statistical significant and measures of association.
11.
Relate statistical findings
to the hypothesis. Accept or reject the null hypothesis.
12.
13.
The relationship between
the independent (X) and the dependent (Y) variables is linear.
14.
Errors in prediction
of the value of Y are distributed in a way that approaches the normal curve.
15.
Errors in prediction
of the value of Y are all independent of one another.
16.
17.
Figure 5.5 –
Modify correlation path
18.
Correlations window will
pop-up & drag Sex under Group analysis by as shown in figure 5.6
19.
Figure 5.6 –
Assigning variables for group analysis
20.
Click on Resultscheck
the option Create a scatter plot for each correlation pair
21.
22.
The data shows
trends of beer sales and the relationship
23.
24.
As you can
see from the raw data, an increase in temperature is strongly and positively correlated to beer sales.
25.
If we make
a simple line plot before we start computing confidence intervals, it will give us a better sense of the information we’re looking at.
26.
Click TaskGraphLine Plot
27.
After selecting the
first line plot, add High Temp to the horizontal axis (independent variable) and Sales to the Y axis (dependent variable)
28.
Figure 7.1
29.
30.
To computer confidence
limits for month, click TaskDescribeDistribution Analysis
31.
To compute confidence
limits on sales, drag sales to the task role pane under variable analysis
32.
33.
The probability of
the mean falling outside of the given confidence limit by chance alone is 5%.
34.
We expect that
if more data on beer sales is collected, the confidence limit is expected to decrease.
35.
Limits on other
variables including month and temperature can be computed by changing the variable analysis accordingly. 123190026670<br />Figure 7.4<br /> AppendixAppendix<br />Team Contributions<br />A simple breakdown by each team, showing how the work was distributed among themselves:<br />Team 1 – Numerical Summaries <br />Definition – Jaswant Seahra, Mriseal Sinha<br />Example– Baljeet Kaur, Jaswant Seahra, Theo Wolski<br />Implementing with SAS – Trystan Macdonald, Surbhi Surbhi<br />Documenting design process– Trystan Macdonald, Theo Wolski<br />Defining SAS results – Trystan Macdonald<br />Conclusion – Trystan Macdonald, Theo Wolski, Jaswant Seahra<br />Compilation – Theo Wolski, Surbhi Surbhi<br />Blueprint – Variation Within The Data <br />Definition – Paramjeet Kaur, Christopher Atkinson<br />Example – Fredric Ayih, Danusha Fernando<br />Designing within SAS – Danusha Fernando , Christopher Atkinson<br />Documenting design process – Gauvtam Bajaaj, Frederic Ayih<br />Defining SAS results – Fredric Ayih , Paramjeet Kaur, Gauvtam Bajaaj<br />Conclusion – Christopher Atkinson , Gauvtam Bajaaj<br />Compilation – Danusha Fernando , Paramjeet Kaur<br />Spice Girls – Confidence Intervals<br />Definition – Everyone<br />Example –Everyone<br />Implementing within SAS – Everyone<br />Documenting design process – Everyone<br />Defining SAS results – Everyone<br />Conclusion – Everyone<br />Compilation – Everyone<br />Sukhoi – Simple Regression<br />Definition – Kalpesh Patel, Ishan Sangrai, Sheleena Jaria<br />Example –Kalpesh Patel, Ishan Sangrai, Sheleena Jaria<br />Implementing within SAS – Amit Bansal, Pranay Sankhe<br />Documenting design process – Amit Bansal, Pranay Sankhe<br />Defining SAS results – Amit Bansal, Pranay Sankhe<br />Conclusion – Amit Bansal, Ishan Sangrai<br />Compilation – Amit Bansal, Ishan Sangrai<br />Fusion – Correlation Coefficient (r)<br />Definition – Everyone<br />Example –Everyone<br />Implementing within SAS – Everyone<br />Documenting design process – Everyone<br />Defining SAS results – Everyone<br />Conclusion – Everyone<br />Compilation – Everyone<br />Gotcha – Test Of Significance<br />Definition – Hasan Can, Michell Escutia, Lily Xu<br />Example – Luz Alvarez<br />Implementing within SAS – Luz Alvarez<br />Documenting design process – Luz Alvarez, Hasan Can, Michell Escutia<br />Defining SAS results – Luz Alvarez, Lily Xu, Sharon Yang<br />Conclusion – Lily Xu, Sharon Yang<br />Compilation – Luz Alvarez, Lily Xu, Sharon Yang, Hasan Can, Michell Escutia<br />Dean Squad – Limits (Confidence / Prediction)<br />Definition – Everyone<br />Example –Everyone<br />Implementing within SAS – Everyone<br />Documenting design process – Everyone<br />Defining SAS results – Everyone<br />Conclusion – Everyone<br />Compilation – Everyone<br />
Jetzt herunterladen