
Statistics, Binder Ready Version: Unlocking the Power of Data
2nd Edition
ISBN: 9781119163664
Author: Robin H. Lock, Patti Frazer Lock, Kari Lock Morgan, Eric F. Lock, Dennis F. Lock
Publisher: WILEY
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Question
Chapter 2.7, Problem 233E
a.
To determine
Find the number of games lost by the warriors at the 24-minute mark.
b.
To determine
Find the number of games lost by the warriors at the 0-minute mark.
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(c) Because logistic regression predicts probabilities of outcomes, observations used to build a logistic regression model need not be independent.
A. false: all observations must be independent
B. true
C. false: only observations with the same outcome need to be independent
I ANSWERED: A. false: all observations must be independent.
(This was marked wrong but I have no idea why. Isn't this a basic assumption of logistic regression)
Business discuss
Spam filters are built on principles similar to those used in logistic regression. We fit a probability that each message is spam or not spam. We have several variables for each email. Here are a few: to_multiple=1 if there are multiple recipients, winner=1 if the word 'winner' appears in the subject line, format=1 if the email is poorly formatted, re_subj=1 if "re" appears in the subject line. A logistic model was fit to a dataset with the following output:
Estimate
SE
Z
Pr(>|Z|)
(Intercept)
-0.8161
0.086
-9.4895
0
to_multiple
-2.5651
0.3052
-8.4047
0
winner
1.5801
0.3156
5.0067
0
format
-0.1528
0.1136
-1.3451
0.1786
re_subj
-2.8401
0.363
-7.824
0
(a) Write down the model using the coefficients from the model fit.log_odds(spam) = -0.8161 + -2.5651 + to_multiple + 1.5801 winner + -0.1528 format + -2.8401 re_subj(b) Suppose we have an observation where to_multiple=0, winner=1, format=0, and re_subj=0. What is the predicted probability that this message is spam?…
Chapter 2 Solutions
Statistics, Binder Ready Version: Unlocking the Power of Data
Ch. 2.1 - Exercises 2.1 to 2.4 provide information about...Ch. 2.1 - Exercises 2.1 to 2.4 provide information about...Ch. 2.1 - Prob. 3ECh. 2.1 - Prob. 4ECh. 2.1 - Prob. 5ECh. 2.1 - Prob. 6ECh. 2.1 - Prob. 7ECh. 2.1 - Prob. 8ECh. 2.1 - Prob. 9ECh. 2.1 - Prob. 10E
Ch. 2.1 - In Exercises 2.11 and 2.12, a two-way table is...Ch. 2.1 - Prob. 12ECh. 2.1 - Prob. 13ECh. 2.1 - Prob. 14ECh. 2.1 - Prob. 15ECh. 2.1 - Prob. 16ECh. 2.1 - Prob. 17ECh. 2.1 - Prob. 18ECh. 2.1 - Prob. 19ECh. 2.1 - Culture and Mental Illness A recent study13...Ch. 2.1 - Prob. 21ECh. 2.1 - Prob. 22ECh. 2.1 - Prob. 23ECh. 2.1 - Prob. 24ECh. 2.1 - Electrical Stimulation for Fresh Insight? If we...Ch. 2.1 - Exercises 2.26 to 2.29 use data on college...Ch. 2.1 - Prob. 27ECh. 2.1 - How Accurate Are Student Perceptions? Students in...Ch. 2.1 - Prob. 29ECh. 2.1 - Prob. 30ECh. 2.1 - Prob. 31ECh. 2.1 - Prob. 32ECh. 2.1 - Prob. 33ECh. 2.1 - Prob. 34ECh. 2.1 - Prob. 35ECh. 2.1 - Prob. 36ECh. 2.1 - Prob. 37ECh. 2.1 - Prob. 38ECh. 2.1 - Prob. 39ECh. 2.1 - Prob. 40ECh. 2.1 - Prob. 41ECh. 2.2 - Exercises 2.42 to 2.48 refer to histograms A...Ch. 2.2 - Prob. 43ECh. 2.2 - Prob. 44ECh. 2.2 - Exercises 2.42 to 2.48 refer to histograms A...Ch. 2.2 - Prob. 46ECh. 2.2 - For each of the four histograms E, F, G, and H,...Ch. 2.2 - Prob. 48ECh. 2.2 - In Exercises 2.49 to 2.52, draw any dotplot to...Ch. 2.2 - Prob. 50ECh. 2.2 - Prob. 51ECh. 2.2 - Prob. 52ECh. 2.2 - Prob. 53ECh. 2.2 - Prob. 54ECh. 2.2 - Prob. 55ECh. 2.2 - Prob. 56ECh. 2.2 - Prob. 57ECh. 2.2 - Prob. 58ECh. 2.2 - Prob. 59ECh. 2.2 - Prob. 60ECh. 2.2 - Prob. 61ECh. 2.2 - Prob. 62ECh. 2.2 - Prob. 63ECh. 2.2 - Prob. 64ECh. 2.2 - Prob. 65ECh. 2.2 - Prob. 66ECh. 2.2 - Prob. 67ECh. 2.2 - Prob. 68ECh. 2.2 - Donating Blood to Grandma? Can young blood help...Ch. 2.2 - Prob. 70ECh. 2.2 - Prob. 71ECh. 2.2 - Prob. 72ECh. 2.2 - Prob. 73ECh. 2.2 - Prob. 74ECh. 2.2 - Prob. 75ECh. 2.2 - Prob. 76ECh. 2.2 - Prob. 77ECh. 2.3 - For the datasets in Exercises 2.78 to 2.83, use...Ch. 2.3 - Prob. 79ECh. 2.3 - Prob. 80ECh. 2.3 - Prob. 81ECh. 2.3 - Prob. 82ECh. 2.3 - Prob. 83ECh. 2.3 - Prob. 84ECh. 2.3 - Prob. 85ECh. 2.3 - Prob. 86ECh. 2.3 - Prob. 87ECh. 2.3 - Prob. 88ECh. 2.3 - Prob. 89ECh. 2.3 - Prob. 90ECh. 2.3 - Prob. 91ECh. 2.3 - Prob. 92ECh. 2.3 - Prob. 93ECh. 2.3 - Prob. 94ECh. 2.3 - Prob. 95ECh. 2.3 - Prob. 96ECh. 2.3 - In Exercises 2.94 to 2.97, indicate whether the...Ch. 2.3 - Prob. 98ECh. 2.3 - Prob. 99ECh. 2.3 - Prob. 100ECh. 2.3 - Prob. 101ECh. 2.3 - Prob. 102ECh. 2.3 - Prob. 103ECh. 2.3 - Prob. 104ECh. 2.3 - Prob. 105ECh. 2.3 - Prob. 106ECh. 2.3 - Prob. 107ECh. 2.3 - Prob. 108ECh. 2.3 - Prob. 109ECh. 2.3 - Prob. 110ECh. 2.3 - Prob. 111ECh. 2.3 - Prob. 112ECh. 2.3 - Laptop Computers and Sperm Count Studies have...Ch. 2.3 - Prob. 114ECh. 2.3 - Prob. 115ECh. 2.3 - Prob. 116ECh. 2.3 - Prob. 117ECh. 2.3 - Which Accomplishment of LeBron James Is Most...Ch. 2.3 - Prob. 119ECh. 2.3 - Prob. 120ECh. 2.3 - Prob. 121ECh. 2.3 - Largest and Smallest Standard Deviation Using only...Ch. 2.3 - Prob. 123ECh. 2.3 - Prob. 124ECh. 2.3 - Prob. 125ECh. 2.3 - Prob. 126ECh. 2.3 - Prob. 127ECh. 2.3 - Prob. 128ECh. 2.3 - Prob. 129ECh. 2.3 - Prob. 130ECh. 2.4 - In Exercises 2.131 and 2.132, match the five...Ch. 2.4 - Prob. 132ECh. 2.4 - Prob. 133ECh. 2.4 - Prob. 134ECh. 2.4 - Prob. 135ECh. 2.4 - Exercises 2.133 to 2.136 show a boxplot for a set...Ch. 2.4 - Prob. 137ECh. 2.4 - Prob. 138ECh. 2.4 - Prob. 139ECh. 2.4 - Prob. 140ECh. 2.4 - Literacy Rate Figure 2.39 gives a boxplot showing...Ch. 2.4 - Young Blood Helps Old Brains Exercise 2.69 on page...Ch. 2.4 - Prob. 143ECh. 2.4 - Prob. 144ECh. 2.4 - Prob. 145ECh. 2.4 - Audience Scores on Rotten Tomatoes The variable...Ch. 2.4 - Do Movie Budgets Differ Based on the Genre of the...Ch. 2.4 - Do Audience Ratings Differ Based on the Genre of...Ch. 2.4 - Physical Activity by Region of the Country in the...Ch. 2.4 - Prob. 150ECh. 2.4 - Prob. 151ECh. 2.4 - How Do Honeybees Communicate Quality? When...Ch. 2.4 - Prob. 153ECh. 2.4 - Prob. 154ECh. 2.4 - Prob. 155ECh. 2.4 - Prob. 156ECh. 2.4 - Prob. 157ECh. 2.4 - Prob. 158ECh. 2.4 - Prob. 159ECh. 2.5 - Match the scatterplots in Figure 2.54 with the...Ch. 2.5 - Match the scatterplots in Figure 2.54 with the...Ch. 2.5 - Prob. 162ECh. 2.5 - Prob. 163ECh. 2.5 - Prob. 164ECh. 2.5 - Prob. 165ECh. 2.5 - Prob. 166ECh. 2.5 - Prob. 167ECh. 2.5 - Prob. 168ECh. 2.5 - Prob. 169ECh. 2.5 - Prob. 170ECh. 2.5 - Prob. 171ECh. 2.5 - Prob. 172ECh. 2.5 - Prob. 173ECh. 2.5 - Prob. 174ECh. 2.5 - Prob. 175ECh. 2.5 - Prob. 176ECh. 2.5 - Prob. 177ECh. 2.5 - Prob. 178ECh. 2.5 - Mother’s Love, Hippocampus, and Resiliency...Ch. 2.5 - Prob. 180ECh. 2.5 - Prob. 181ECh. 2.5 - Prob. 182ECh. 2.5 - Prob. 183ECh. 2.5 - Prob. 184ECh. 2.5 - Prob. 185ECh. 2.5 - Prob. 186ECh. 2.5 - Prob. 187ECh. 2.5 - Prob. 188ECh. 2.5 - Prob. 189ECh. 2.5 - Prob. 190ECh. 2.5 - Prob. 191ECh. 2.5 - Prob. 192ECh. 2.5 - Prob. 193ECh. 2.5 - Prob. 194ECh. 2.5 - Iris Petals Allometry is the area of biology that...Ch. 2.5 - Create a Scatterplot Draw any scatterplot...Ch. 2.5 - Prob. 197ECh. 2.5 - Do Movies with Larger Budgets Get Higher Audience...Ch. 2.5 - Prob. 199ECh. 2.6 - In Exercises 2.200 to 2.203, two variables are...Ch. 2.6 - Prob. 201ECh. 2.6 - Prob. 202ECh. 2.6 - Prob. 203ECh. 2.6 - Prob. 204ECh. 2.6 - Prob. 205ECh. 2.6 - Use technology to find the regression line to...Ch. 2.6 - Prob. 207ECh. 2.6 - Prob. 208ECh. 2.6 - Prob. 209ECh. 2.6 - Is It Getting Harder to Win a Hot Dog Eating...Ch. 2.6 - Prob. 211ECh. 2.6 - Football and Cognitive Percentile Exercise 2.143...Ch. 2.6 - Prob. 213ECh. 2.6 - Prob. 214ECh. 2.6 - Prob. 215ECh. 2.6 - Height and Weight Using the data in the...Ch. 2.6 - Prob. 217ECh. 2.6 - Prob. 218ECh. 2.6 - Prob. 219ECh. 2.6 - Prob. 220ECh. 2.6 - Prob. 221ECh. 2.6 - Prob. 222ECh. 2.6 - Prob. 223ECh. 2.6 - Prob. 224ECh. 2.6 - Prob. 225ECh. 2.7 - Prob. 226ECh. 2.7 - Prob. 227ECh. 2.7 - Prob. 228ECh. 2.7 - Visualizing Football and Brain Size Exercise 2.143...Ch. 2.7 - Prob. 230ECh. 2.7 - Prob. 231ECh. 2.7 - Prob. 232ECh. 2.7 - Prob. 233ECh. 2.7 - Prob. 236ECh. 2.7 - Prob. 237ECh. 2.7 - Prob. 239ECh. 2.7 - Prob. 240ECh. 2.7 - Prob. 241ECh. 2.7 - Prob. 244ECh. 2.7 - Prob. 245ECh. 2.7 - Prob. 246ECh. 2.7 - Prob. 247ECh. 2.7 - Prob. 248ECh. 2.7 - Prob. 249ECh. 2.7 - Prob. 250ECh. 2.7 - Prob. 251ECh. 2.7 - Prob. 252ECh. 2.7 - Prob. 253ECh. 2.7 - Prob. 254ECh. 2.7 - Prob. 256ECh. 2.7 - Prob. 257ECh. 2.7 - Prob. 258ECh. 2.7 - Prob. 259ECh. 2.7 - Prob. 260ECh. 2.7 - Prob. 268E
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