| Type: | Package | 
| Title: | Data for an Introduction to Statistical Learning with Applications in R | 
| Version: | 1.4 | 
| Date: | 2021-09-14 | 
| Author: | Gareth James, Daniela Witten, Trevor Hastie and Rob Tibshirani | 
| Maintainer: | Trevor Hastie <hastie@stanford.edu> | 
| Suggests: | MASS | 
| Description: | We provide the collection of data-sets used in the book 'An Introduction to Statistical Learning with Applications in R'. | 
| Depends: | R (≥ 3.5.0) | 
| License: | GPL-2 | 
| LazyLoad: | yes | 
| LazyData: | yes | 
| URL: | https://www.statlearning.com | 
| NeedsCompilation: | no | 
| Packaged: | 2021-09-15 01:19:20 UTC; hastie | 
| Repository: | CRAN | 
| Date/Publication: | 2021-09-15 05:30:09 UTC | 
Auto Data Set
Description
Gas mileage, horsepower, and other information for 392 vehicles.
Usage
AutoFormat
A data frame with 392 observations on the following 9 variables.
- mpg
- miles per gallon 
- cylinders
- Number of cylinders between 4 and 8 
- displacement
- Engine displacement (cu. inches) 
- horsepower
- Engine horsepower 
- weight
- Vehicle weight (lbs.) 
- acceleration
- Time to accelerate from 0 to 60 mph (sec.) 
- year
- Model year (modulo 100) 
- origin
- Origin of car (1. American, 2. European, 3. Japanese) 
- name
- Vehicle name 
The orginal data contained 408 observations but 16 observations with missing values were removed.
Source
This dataset was taken from the StatLib library which is maintained at Carnegie Mellon University. The dataset was used in the 1983 American Statistical Association Exposition.
References
James, G., Witten, D., Hastie, T., and Tibshirani, R. (2013) An Introduction to Statistical Learning with applications in R, https://www.statlearning.com, Springer-Verlag, New York
Examples
pairs(Auto)
attach(Auto)
hist(mpg)
The Insurance Company (TIC) Benchmark
Description
The data contains 5822 real customer records. Each record
consists of 86 variables, containing sociodemographic data (variables
1-43) and product ownership (variables 44-86). The sociodemographic
data is derived from zip codes. All customers living in areas with the
same zip code have the same sociodemographic attributes. Variable 86
(Purchase) indicates whether the customer purchased a caravan
insurance policy. Further information on the individual variables can
be obtained at  http://www.liacs.nl/~putten/library/cc2000/data.html
Usage
CaravanFormat
A data frame with 5822 observations on 86 variables.
Source
The data was originally supplied by Sentient Machine Research and was used in the CoIL Challenge 2000.
References
P. van der Putten and M. van Someren (eds) . CoIL Challenge
2000: The Insurance Company Case.  Published by Sentient Machine
Research, Amsterdam. Also a Leiden Institute of Advanced Computer
Science Technical Report 2000-09. June 22, 2000. See
http://www.liacs.nl/~putten/library/cc2000/
P. van der Putten and M. van Someren. A Bias-Variance Analysis of a Real World Learning Problem: The CoIL Challenge 2000. Machine Learning, October 2004, vol. 57, iss. 1-2, pp. 177-195, Kluwer Academic Publishers
James, G., Witten, D., Hastie, T., and Tibshirani, R. (2013)
An Introduction to Statistical Learning with applications in R,
https://www.statlearning.com,
Springer-Verlag, New York
Examples
summary(Caravan)
plot(Caravan$Purchase)
Sales of Child Car Seats
Description
A simulated data set containing sales of child car seats at 400 different stores.
Usage
CarseatsFormat
A data frame with 400 observations on the following 11 variables.
- Sales
- Unit sales (in thousands) at each location 
- CompPrice
- Price charged by competitor at each location 
- Income
- Community income level (in thousands of dollars) 
- Advertising
- Local advertising budget for company at each location (in thousands of dollars) 
- Population
- Population size in region (in thousands) 
- Price
- Price company charges for car seats at each site 
- ShelveLoc
- A factor with levels - Bad,- Goodand- Mediumindicating the quality of the shelving location for the car seats at each site
- Age
- Average age of the local population 
- Education
- Education level at each location 
- Urban
- A factor with levels - Noand- Yesto indicate whether the store is in an urban or rural location
- US
- A factor with levels - Noand- Yesto indicate whether the store is in the US or not
Source
Simulated data
References
James, G., Witten, D., Hastie, T., and Tibshirani, R. (2013) An Introduction to Statistical Learning with applications in R, https://www.statlearning.com, Springer-Verlag, New York
Examples
summary(Carseats)
lm.fit=lm(Sales~Advertising+Price,data=Carseats)
U.S. News and World Report's College Data
Description
Statistics for a large number of US Colleges from the 1995 issue of US News and World Report.
Usage
CollegeFormat
A data frame with 777 observations on the following 18 variables.
- Private
- A factor with levels - Noand- Yesindicating private or public university
- Apps
- Number of applications received 
- Accept
- Number of applications accepted 
- Enroll
- Number of new students enrolled 
- Top10perc
- Pct. new students from top 10% of H.S. class 
- Top25perc
- Pct. new students from top 25% of H.S. class 
- F.Undergrad
- Number of fulltime undergraduates 
- P.Undergrad
- Number of parttime undergraduates 
- Outstate
- Out-of-state tuition 
- Room.Board
- Room and board costs 
- Books
- Estimated book costs 
- Personal
- Estimated personal spending 
- PhD
- Pct. of faculty with Ph.D.'s 
- Terminal
- Pct. of faculty with terminal degree 
- S.F.Ratio
- Student/faculty ratio 
- perc.alumni
- Pct. alumni who donate 
- Expend
- Instructional expenditure per student 
- Grad.Rate
- Graduation rate 
Source
This dataset was taken from the StatLib library which is maintained at Carnegie Mellon University. The dataset was used in the ASA Statistical Graphics Section's 1995 Data Analysis Exposition.
References
James, G., Witten, D., Hastie, T., and Tibshirani, R. (2013) An Introduction to Statistical Learning with applications in R, https://www.statlearning.com, Springer-Verlag, New York
Examples
summary(College)
lm(Apps~Private+Accept,data=College)
Credit Card Balance Data
Description
A simulated data set containing information on ten thousand customers. The aim here is to predict which customers will default on their credit card debt.
Usage
CreditFormat
A data frame with 10000 observations on the following 4 variables.
- ID
- Identification 
- Income
- Income in $1,000's 
- Limit
- Credit limit 
- Rating
- Credit rating 
- Cards
- Number of credit cards 
- Age
- Age in years 
- Education
- Number of years of education 
- Gender
- A factor with levels - Maleand- Female
- Student
- A factor with levels - Noand- Yesindicating whether the individual was a student
- Married
- A factor with levels - Noand- Yesindicating whether the individual was married
- Ethnicity
- A factor with levels - African American,- Asian, and- Caucasianindicating the individual's ethnicity
- Balance
- Average credit card balance in $. 
Source
Simulated data, with thanks to Albert Kim for pointing out that this was omitted, and supplying the data and man documentation page on Oct 19, 2017
References
James, G., Witten, D., Hastie, T., and Tibshirani, R. (2013) An Introduction to Statistical Learning with applications in R, https://www.statlearning.com, Springer-Verlag, New York
Examples
summary(Credit)
lm(Balance ~ Student + Limit, data=Credit)
Credit Card Default Data
Description
A simulated data set containing information on ten thousand customers. The aim here is to predict which customers will default on their credit card debt.
Usage
DefaultFormat
A data frame with 10000 observations on the following 4 variables.
- default
- A factor with levels - Noand- Yesindicating whether the customer defaulted on their debt
- student
- A factor with levels - Noand- Yesindicating whether the customer is a student
- balance
- The average balance that the customer has remaining on their credit card after making their monthly payment 
- income
- Income of customer 
Source
Simulated data
References
James, G., Witten, D., Hastie, T., and Tibshirani, R. (2013) An Introduction to Statistical Learning with applications in R, https://www.statlearning.com, Springer-Verlag, New York
Examples
summary(Default)
glm(default~student+balance+income,family="binomial",data=Default)
Baseball Data
Description
Major League Baseball Data from the 1986 and 1987 seasons.
Usage
HittersFormat
A data frame with 322 observations of major league players on the following 20 variables.
- AtBat
- Number of times at bat in 1986 
- Hits
- Number of hits in 1986 
- HmRun
- Number of home runs in 1986 
- Runs
- Number of runs in 1986 
- RBI
- Number of runs batted in in 1986 
- Walks
- Number of walks in 1986 
- Years
- Number of years in the major leagues 
- CAtBat
- Number of times at bat during his career 
- CHits
- Number of hits during his career 
- CHmRun
- Number of home runs during his career 
- CRuns
- Number of runs during his career 
- CRBI
- Number of runs batted in during his career 
- CWalks
- Number of walks during his career 
- League
- A factor with levels - Aand- Nindicating player's league at the end of 1986
- Division
- A factor with levels - Eand- Windicating player's division at the end of 1986
- PutOuts
- Number of put outs in 1986 
- Assists
- Number of assists in 1986 
- Errors
- Number of errors in 1986 
- Salary
- 1987 annual salary on opening day in thousands of dollars 
- NewLeague
- A factor with levels - Aand- Nindicating player's league at the beginning of 1987
Source
This dataset was taken from the StatLib library which is maintained at Carnegie Mellon University. This is part of the data that was used in the 1988 ASA Graphics Section Poster Session. The salary data were originally from Sports Illustrated, April 20, 1987. The 1986 and career statistics were obtained from The 1987 Baseball Encyclopedia Update published by Collier Books, Macmillan Publishing Company, New York.
References
James, G., Witten, D., Hastie, T., and Tibshirani, R. (2013) An Introduction to Statistical Learning with applications in R, https://www.statlearning.com, Springer-Verlag, New York
Examples
summary(Hitters)
lm(Salary~AtBat+Hits,data=Hitters)
Khan Gene Data
Description
The data consists of a number of tissue samples corresponding to four distinct types of small round blue cell tumors. For each tissue sample, 2308 gene expression measurements are available.
Usage
KhanFormat
The format is a list containing four components: xtrain,
xtest, ytrain, and ytest. xtrain contains
the 2308 gene expression values for 63 subjects and ytrain
records the corresponding tumor type. ytrain and ytest
contain the corresponding testing sample information for a further 20 subjects.
Source
This data were originally reported in:
Khan J, Wei J, Ringner M, Saal L, Ladanyi M, Westermann F, Berthold F, Schwab M, Antonescu C, Peterson C, and Meltzer P. Classification and diagnostic prediction of cancers using gene expression profiling and artificial neural networks. Nature Medicine, v.7, pp.673-679, 2001.
The data were also used in:
Tibshirani RJ, Hastie T, Narasimhan B, and G. Chu. Diagnosis of Multiple Cancer Types by Shrunken Centroids of Gene Expression. Proceedings of the National Academy of Sciences of the United States of America, v.99(10), pp.6567-6572, May 14, 2002.
References
James, G., Witten, D., Hastie, T., and Tibshirani, R. (2013) An Introduction to Statistical Learning with applications in R, https://www.statlearning.com, Springer-Verlag, New York
Examples
table(Khan$ytrain)
table(Khan$ytest)
NCI 60 Data
Description
NCI microarray data. The data contains expression levels on 6830 genes from 64 cancer cell lines. Cancer type is also recorded.
Usage
NCI60Format
The format is a list containing two elements: data and
labs.
data is a 64 by 6830 matrix of the expression values while
labs is a vector listing the cancer types for the 64 cell lines.
Source
The data come from Ross et al. (Nat Genet., 2000). More information can be obtained at http://genome-www.stanford.edu/nci60/
References
James, G., Witten, D., Hastie, T., and Tibshirani, R. (2013) An Introduction to Statistical Learning with applications in R, https://www.statlearning.com, Springer-Verlag, New York
Examples
table(NCI60$labs)
Orange Juice Data
Description
The data contains 1070 purchases where the customer either purchased Citrus Hill or Minute Maid Orange Juice. A number of characteristics of the customer and product are recorded.
Usage
OJFormat
A data frame with 1070 observations on the following 18 variables.
- Purchase
- A factor with levels - CHand- MMindicating whether the customer purchased Citrus Hill or Minute Maid Orange Juice
- WeekofPurchase
- Week of purchase 
- StoreID
- Store ID 
- PriceCH
- Price charged for CH 
- PriceMM
- Price charged for MM 
- DiscCH
- Discount offered for CH 
- DiscMM
- Discount offered for MM 
- SpecialCH
- Indicator of special on CH 
- SpecialMM
- Indicator of special on MM 
- LoyalCH
- Customer brand loyalty for CH 
- SalePriceMM
- Sale price for MM 
- SalePriceCH
- Sale price for CH 
- PriceDiff
- Sale price of MM less sale price of CH 
- Store7
- A factor with levels - Noand- Yesindicating whether the sale is at Store 7
- PctDiscMM
- Percentage discount for MM 
- PctDiscCH
- Percentage discount for CH 
- ListPriceDiff
- List price of MM less list price of CH 
- STORE
- Which of 5 possible stores the sale occured at 
Source
Stine, Robert A., Foster, Dean P., Waterman, Richard P. Business Analysis Using Regression (1998). Published by Springer.
References
James, G., Witten, D., Hastie, T., and Tibshirani, R. (2013) An Introduction to Statistical Learning with applications in R, https://www.statlearning.com, Springer-Verlag, New York
Examples
summary(OJ)
plot(OJ$Purchase,OJ$PriceCH)
Portfolio Data
Description
A simple simulated data set containing 100 returns for each of two assets, X and Y. The data is used to estimate the optimal fraction to invest in each asset to minimize investment risk of the combined portfolio. One can then use the Bootstrap to estimate the standard error of this estimate.
Usage
PortfolioFormat
A data frame with 100 observations on the following 2 variables.
- X
- Returns for Asset X 
- Y
- Returns for Asset Y 
Source
Simulated data
References
James, G., Witten, D., Hastie, T., and Tibshirani, R. (2013) An Introduction to Statistical Learning with applications in R, https://www.statlearning.com, Springer-Verlag, New York
Examples
summary(Portfolio)
attach(Portfolio)
plot(X,Y)
S&P Stock Market Data
Description
Daily percentage returns for the S&P 500 stock index between 2001 and 2005.
Usage
SmarketFormat
A data frame with 1250 observations on the following 9 variables.
- Year
- The year that the observation was recorded 
- Lag1
- Percentage return for previous day 
- Lag2
- Percentage return for 2 days previous 
- Lag3
- Percentage return for 3 days previous 
- Lag4
- Percentage return for 4 days previous 
- Lag5
- Percentage return for 5 days previous 
- Volume
- Volume of shares traded (number of daily shares traded in billions) 
- Today
- Percentage return for today 
- Direction
- A factor with levels - Downand- Upindicating whether the market had a positive or negative return on a given day
Source
Raw values of the S&P 500 were obtained from Yahoo Finance and then converted to percentages and lagged.
References
James, G., Witten, D., Hastie, T., and Tibshirani, R. (2013) An Introduction to Statistical Learning with applications in R, https://www.statlearning.com, Springer-Verlag, New York
Examples
summary(Smarket)
lm(Today~Lag1+Lag2,data=Smarket)
Mid-Atlantic Wage Data
Description
Wage and other data for a group of 3000 male workers in the Mid-Atlantic region.
Usage
WageFormat
A data frame with 3000 observations on the following 11 variables.
- year
- Year that wage information was recorded 
- age
- Age of worker 
- maritl
- A factor with levels - 1. Never Married- 2. Married- 3. Widowed- 4. Divorcedand- 5. Separatedindicating marital status
- race
- A factor with levels - 1. White- 2. Black- 3. Asianand- 4. Otherindicating race
- education
- A factor with levels - 1. < HS Grad- 2. HS Grad- 3. Some College- 4. College Gradand- 5. Advanced Degreeindicating education level
- region
- Region of the country (mid-atlantic only) 
- jobclass
- A factor with levels - 1. Industrialand- 2. Informationindicating type of job
- health
- A factor with levels - 1. <=Goodand- 2. >=Very Goodindicating health level of worker
- health_ins
- A factor with levels - 1. Yesand- 2. Noindicating whether worker has health insurance
- logwage
- Log of workers wage 
- wage
- Workers raw wage 
Source
Data was manually assembled by Steve Miller, of Inquidia Consulting (formerly Open BI). From the March 2011 Supplement to Current Population Survey data.
https://www.re3data.org/repository/r3d100011860
References
James, G., Witten, D., Hastie, T., and Tibshirani, R. (2013) An Introduction to Statistical Learning with applications in R, https://www.statlearning.com, Springer-Verlag, New York
Examples
summary(Wage)
lm(wage~year+age,data=Wage)
## maybe str(Wage) ; plot(Wage) ...
Weekly S&P Stock Market Data
Description
Weekly percentage returns for the S&P 500 stock index between 1990 and 2010.
Usage
WeeklyFormat
A data frame with 1089 observations on the following 9 variables.
- Year
- The year that the observation was recorded 
- Lag1
- Percentage return for previous week 
- Lag2
- Percentage return for 2 weeks previous 
- Lag3
- Percentage return for 3 weeks previous 
- Lag4
- Percentage return for 4 weeks previous 
- Lag5
- Percentage return for 5 weeks previous 
- Volume
- Volume of shares traded (average number of daily shares traded in billions) 
- Today
- Percentage return for this week 
- Direction
- A factor with levels - Downand- Upindicating whether the market had a positive or negative return on a given week
Source
Raw values of the S&P 500 were obtained from Yahoo Finance and then converted to percentages and lagged.
References
James, G., Witten, D., Hastie, T., and Tibshirani, R. (2013) An Introduction to Statistical Learning with applications in R, https://www.statlearning.com, Springer-Verlag, New York
Examples
summary(Weekly)
lm(Today~Lag1+Lag2,data=Weekly)