Tools for an Introductory Class in Regression and Modeling


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Documentation for package ‘regclass’ version 1.6

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A B C D E F G I J L M N O P Q S T V W

-- A --

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

-- B --

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

-- C --

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

-- D --

DIET DIET data
DONOR DONOR dataset

-- E --

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

-- F --

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

-- G --

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

-- I --

influence.plot Influence plot for regression diganostics
influence_plot Influence plot for regression diganostics

-- J --

JUNK Junk-mail dataset

-- L --

LARGEFLYER Interest in frequent flier program (large version)
LAUNCH New product launch data

-- M --

mode_factor Find the mode of a categorical variable
mosaic Mosaic plot
MOVIE Movie grosses

-- N --

NFL NFL database

-- O --

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

-- P --

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

-- Q --

qq QQ plot

-- S --

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

-- T --

TIPS TIPS dataset

-- V --

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

-- W --

WINE WINE data