A B C D E F G I J L M N O P Q S T V W
ACCOUNT | Predicting whether a customer will open a new kind of account |
all.correlations | Pairwise correlations between quantitative variables |
all_correlations | Pairwise correlations between quantitative variables |
APPLIANCE | Appliance shipments |
associate | Association Analysis |
ATTRACTF | Attractiveness Score (female) |
ATTRACTM | Attractiveness Score (male) |
AUTO | AUTO dataset |
BODYFAT | BODYFAT data |
BODYFAT2 | Secondary BODYFAT dataset |
build.model | Variable selection for descriptive or predictive linear and logistic regression models |
build.tree | Exploratory building of partition models |
build_model | Variable selection for descriptive or predictive linear and logistic regression models |
build_tree | Exploratory building of partition models |
BULLDOZER | BULLDOZER data |
BULLDOZER2 | Modified BULLDOZER data |
CALLS | CALLS dataset |
CENSUS | CENSUS data |
CENSUSMLR | Subset of CENSUS data |
CHARITY | CHARITY dataset |
check.regression | Linear and Logistic Regression diagnostics |
check_regression | Linear and Logistic Regression diagnostics |
choose.order | Choosing order of a polynomial model |
choose_order | Choosing order of a polynomial model |
CHURN | CHURN dataset |
combine_rare_levels | Combines rare levels of a categorical variable |
confusion.matrix | Confusion matrix for logistic regression models |
confusion_matrix | Confusion matrix for logistic regression models |
cor.demo | Correlation demo |
cor.matrix | Correlation Matrix |
cor_demo | Correlation demo |
cor_matrix | Correlation Matrix |
CUSTCHURN | CUSTCHURN dataset |
CUSTLOYALTY | CUSTLOYALTY dataset |
CUSTREACQUIRE | CUSTREACQUIRE dataset |
CUSTVALUE | CUSTVALUE dataset |
DIET | DIET data |
DONOR | DONOR dataset |
EDUCATION | EDUCATION data |
EX2.CENSUS | CENSUS data for Exercise 5 in Chapter 2 |
EX2.TIPS | TIPS data for Exercise 6 in Chapter 2 |
EX3.ABALONE | ABALONE dataset for Exercise D in Chapter 3 |
EX3.BODYFAT | Bodyfat data for Exercise F in Chapter 3 |
EX3.HOUSING | Housing data for Exercise E in Chapter 3 |
EX3.NFL | NFL data for Exercise A in Chapter 3 |
EX4.BIKE | Bike data for Exercise 1 in Chapter 4 |
EX4.STOCKPREDICT | Stock data for Exercise 2 in Chapter 4 (prediction set) |
EX4.STOCKS | Stock data for Exercise 2 in Chapter 4 |
EX5.BIKE | BIKE dataset for Exercise 4 Chapter 5 |
EX5.DONOR | DONOR dataset for Exercise 4 in Chapter 5 |
EX6.CLICK | CLICK data for Exercise 2 in Chapter 6 |
EX6.DONOR | DONOR dataset for Exercise 1 in Chapter 6 |
EX6.WINE | WINE data for Exercise 3 Chapter 6 |
EX7.BIKE | BIKE dataset for Exercise 1 Chapters 7 and 8 |
EX7.CATALOG | CATALOG data for Exercise 2 in Chapters 7 and 8 |
EX9.BIRTHWEIGHT | Birthweight dataset for Exercise 1 in Chapter 9 |
EX9.NFL | NFL data for Exercise 2 Chapter 9 |
EX9.STORE | Data for Exercise 3 Chapter 9 |
extrapolation.check | A crude check for extrapolation |
extrapolation_check | A crude check for extrapolation |
find.transformations | Transformations for simple linear regression |
find_transformations | Transformations for simple linear regression |
FRIEND | Friendship Potential vs. Attractiveness Ratings |
FUMBLES | Wins vs. Fumbles of an NFL team |
generalization.error | Calculating the generalization error of a model on a set of data |
generalization_error | Calculating the generalization error of a model on a set of data |
getcp | Complexity Parameter table for partition models |
influence.plot | Influence plot for regression diganostics |
influence_plot | Influence plot for regression diganostics |
JUNK | Junk-mail dataset |
LARGEFLYER | Interest in frequent flier program (large version) |
LAUNCH | New product launch data |
mode_factor | Find the mode of a categorical variable |
mosaic | Mosaic plot |
MOVIE | Movie grosses |
NFL | NFL database |
OFFENSE | Some offensive statistics from 'NFL' dataset |
outlier_demo | Interactive demonstration of the effect of an outlier on a regression |
overfit.demo | Demonstration of overfitting |
overfit_demo | Demonstration of overfitting |
PIMA | Pima Diabetes dataset |
POISON | Cockroach poisoning data |
possible.regressions | Illustrating how a simple linear/logistic regression could have turned out via permutations |
possible_regressions | Illustrating how a simple linear/logistic regression could have turned out via permutations |
PRODUCT | Sales of a product one quarter after release |
PURCHASE | PURCHASE data |
QQ plot |
SALARY | Harris Bank Salary data |
see.interactions | Examining pairwise interactions between quantitative variables for a fitted regression model |
see.models | Examining model AICs from the "all possible" regressions procedure using regsubsets |
see_interactions | Examining pairwise interactions between quantitative variables for a fitted regression model |
see_models | Examining model AICs from the "all possible" regressions procedure using regsubsets |
segmented.barchart | Segmented barchart |
segmented_barchart | Segmented barchart |
SMALLFLYER | Interest in a frequent flier program (small version) |
SOLD26 | Predicting future sales |
SPEED | Speed vs. Fuel Efficiency |
STUDENT | STUDENT data |
suggest_levels | Combining levels of a categorical variable |
summarize.tree | Useful summaries of partition models from rpart |
summarize_tree | Useful summaries of partition models from rpart |
SURVEY09 | Student survey 2009 |
SURVEY10 | Student survey 2010 |
SURVEY11 | Student survey 2011 |
TIPS | TIPS dataset |
VIF | Variance Inflation Factor |
visualize.model | Visualizations of one or two variable linear or logistic regressions or of partitions models |
visualize.relationship | Visualizing the relationship between y and x in a partition model |
visualize_model | Visualizations of one or two variable linear or logistic regressions or of partitions models |
visualize_relationship | Visualizing the relationship between y and x in a partition model |
WINE | WINE data |