Data mining and predictive analytics / (Record no. 12900)
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control field | OSt |
005 - DATE AND TIME OF LATEST TRANSACTION | |
control field | 20210929115058.0 |
008 - FIXED-LENGTH DATA ELEMENTS--GENERAL INFORMATION | |
fixed length control field | 210929b xxu||||| |||| 00| 0 eng d |
015 ## - NATIONAL BIBLIOGRAPHY NUMBER | |
Source | Uk |
National bibliography number | GBB539014 |
020 ## - INTERNATIONAL STANDARD BOOK NUMBER | |
International Standard Book Number | 9781118116197 (hbk.) |
040 ## - CATALOGING SOURCE | |
Transcribing agency | IIMU |
082 ## - DEWEY DECIMAL CLASSIFICATION NUMBER | |
Edition number | 23 |
Classification number | 006.312 LDT |
100 10 - MAIN ENTRY--PERSONAL NAME | |
Personal name | Larose, Daniel T. |
245 ## - TITLE STATEMENT | |
Title | Data mining and predictive analytics / |
Statement of responsibility, etc. | Daniel T. Larose, Chantal D. Larose. |
250 ## - EDITION STATEMENT | |
Edition statement | 2nd ed. |
260 ## - PUBLICATION, DISTRIBUTION, ETC. | |
Name of publisher, distributor, etc. | Wiley, |
Date of publication, distribution, etc. | 2015. |
Place of publication, distribution, etc. | New Jersey : |
300 ## - PHYSICAL DESCRIPTION | |
Extent | xxix, 794 pages : |
Other physical details | ill.; |
Dimensions | 25 cm. |
440 ## - SERIES STATEMENT/ADDED ENTRY--TITLE | |
Title | Wiley Series on Methods and Applications in Data Mining |
504 ## - BIBLIOGRAPHY, ETC. NOTE | |
Bibliography, etc. note | Includes bibliographical references and index. |
505 ## - FORMATTED CONTENTS NOTE | |
Formatted contents note | TABLE OF CONTENTS PREFACE xxi ACKNOWLEDGMENTS xxix PART I DATA PREPARATION 1 CHAPTER 1 AN INTRODUCTION TO DATA MINING AND PREDICTIVE ANALYTICS 3 1.1 What is Data Mining? What is Predictive Analytics? 3 1.2 Wanted: Data Miners 5 1.3 The Need for Human Direction of Data Mining 6 1.4 The Cross-Industry Standard Process for Data Mining: CRISP-DM 6 1.4.1 CRISP-DM: The Six Phases 7 1.5 Fallacies of Data Mining 9 1.6 What Tasks Can Data Mining Accomplish 10 CHAPTER 2 DATA PREPROCESSING 20 2.1 Why do We Need to Preprocess the Data? 20 2.2 Data Cleaning 21 2.3 Handling Missing Data 22 2.4 Identifying Misclassifications 25 2.5 Graphical Methods for Identifying Outliers 26 2.6 Measures of Center and Spread 27 2.7 Data Transformation 30 2.8 Min–Max Normalization 30 2.9 Z-Score Standardization 31 2.10 Decimal Scaling 32 2.11 Transformations to Achieve Normality 32 2.12 Numerical Methods for Identifying Outliers 38 2.13 Flag Variables 39 2.14 Transforming Categorical Variables into Numerical Variables 40 2.15 Binning Numerical Variables 41 2.16 Reclassifying Categorical Variables 42 2.17 Adding an Index Field 43 2.18 Removing Variables that are not Useful 43 2.19 Variables that Should Probably not be Removed 43 2.20 Removal of Duplicate Records 44 2.21 A Word About ID Fields 45 CHAPTER 3 EXPLORATORY DATA ANALYSIS 54 3.1 Hypothesis Testing Versus Exploratory Data Analysis 54 3.2 Getting to Know the Data Set 54 3.3 Exploring Categorical Variables 56 3.4 Exploring Numeric Variables 64 3.5 Exploring Multivariate Relationships 69 3.6 Selecting Interesting Subsets of the Data for Further Investigation 70 3.7 Using EDA to Uncover Anomalous Fields 71 3.8 Binning Based on Predictive Value 72 3.9 Deriving New Variables: Flag Variables 75 3.10 Deriving New Variables: Numerical Variables 77 3.11 Using EDA to Investigate Correlated Predictor Variables 78 3.12 Summary of Our EDA 81 CHAPTER 4 DIMENSION-REDUCTION METHODS 92 4.1 Need for Dimension-Reduction in Data Mining 92 4.2 Principal Components Analysis 93 4.3 Applying PCA to the Houses Data Set 96 4.4 How Many Components Should We Extract? 102 4.5 Profiling the Principal Components 105 4.6 Communalities 108 4.7 Validation of the Principal Components 110 4.8 Factor Analysis 110 4.9 Applying Factor Analysis to the Adult Data Set 111 4.10 Factor Rotation 114 4.11 User-Defined Composites 117 4.12 An Example of a User-Defined Composite 118 PART II STATISTICAL ANALYSIS 129 CHAPTER 5 UNIVARIATE STATISTICAL ANALYSIS 131 5.1 Data Mining Tasks in Discovering Knowledge in Data 131 5.2 Statistical Approaches to Estimation and Prediction 131 5.3 Statistical Inference 132 5.4 How Confident are We in Our Estimates? 133 5.5 Confidence Interval Estimation of the Mean 134 5.6 How to Reduce the Margin of Error 136 5.7 Confidence Interval Estimation of the Proportion 137 5.8 Hypothesis Testing for the Mean 138 5.9 Assessing the Strength of Evidence Against the Null Hypothesis 140 5.10 Using Confidence Intervals to Perform Hypothesis Tests 141 5.11 Hypothesis Testing for the Proportion 143 CHAPTER 6 MULTIVARIATE STATISTICS 148 6.1 Two-Sample t-Test for Difference in Means 148 6.2 Two-Sample Z-Test for Difference in Proportions 149 6.3 Test for the Homogeneity of Proportions 150 6.4 Chi-Square Test for Goodness of Fit of Multinomial Data 152 6.5 Analysis of Variance 153 CHAPTER 7 PREPARING TO MODEL THE DATA 160 7.1 Supervised Versus Unsupervised Methods 160 7.2 Statistical Methodology and Data Mining Methodology 161 7.3 Cross-Validation 161 7.4 Overfitting 163 7.5 Bias–Variance Trade-Off 164 7.6 Balancing the Training Data Set 166 7.7 Establishing Baseline Performance 167 CHAPTER 8 SIMPLE LINEAR REGRESSION 171 8.1 An Example of Simple Linear Regression 171 8.2 Dangers of Extrapolation 177 8.3 How Useful is the Regression? The Coefficient of Determination, r2 178 8.4 Standard Error of the Estimate, s 183 8.5 Correlation Coefficient r 184 8.6 Anova Table for Simple Linear Regression 186 8.7 Outliers, High Leverage Points, and Influential Observations 186 8.8 Population Regression Equation 195 8.9 Verifying the Regression Assumptions 198 8.10 Inference in Regression 203 8.11 t-Test for the Relationship Between x and y 204 8.12 Confidence Interval for the Slope of the Regression Line 206 8.13 Confidence Interval for the Correlation Coefficient p 208 8.14 Confidence Interval for the Mean Value of y Given x 210 8.15 Prediction Interval for a Randomly Chosen Value of y Given x 211 8.16 Transformations to Achieve Linearity 213 8.17 Box–Cox Transformations 220 CHAPTER 9 MULTIPLE REGRESSION AND MODEL BUILDING 236 9.1 An Example of Multiple Regression 236 9.2 The Population Multiple Regression Equation 242 9.3 Inference in Multiple Regression 243 9.4 Regression with Categorical Predictors, Using Indicator Variables 249 9.5 Adjusting R2: Penalizing Models for Including Predictors that are not Useful 256 9.6 Sequential Sums of Squares 257 9.7 Multicollinearity 258 9.8 Variable Selection Methods 266 9.9 Gas Mileage Data Set 270 9.10 An Application of Variable Selection Methods 271 9.11 Using the Principal Components as Predictors in Multiple Regression 279 PART III CLASSIFICATION 299 CHAPTER 10 k-NEAREST NEIGHBOR ALGORITHM 301 10.1 Classification Task 301 10.2 k-Nearest Neighbor Algorithm 302 10.3 Distance Function 305 10.4 Combination Function 307 10.5 Quantifying Attribute Relevance: Stretching the Axes 309 10.6 Database Considerations 310 10.7 k-Nearest Neighbor Algorithm for Estimation and Prediction 310 10.8 Choosing k 311 10.9 Application of k-Nearest Neighbor Algorithm Using IBM/SPSS Modeler 312 CHAPTER 11 DECISION TREES 317 11.1 What is a Decision Tree? 317 11.2 Requirements for Using Decision Trees 319 11.3 Classification and Regression Trees 319 11.4 C4.5 Algorithm 326 11.5 Decision Rules 332 11.6 Comparison of the C5.0 and CART Algorithms Applied to Real Data 332 CHAPTER 12 NEURAL NETWORKS 339 12.1 Input and Output Encoding 339 12.2 Neural Networks for Estimation and Prediction 342 12.3 Simple Example of a Neural Network 342 12.4 Sigmoid Activation Function 344 12.5 Back-Propagation 345 12.6 Gradient-Descent Method 346 12.7 Back-Propagation Rules 347 12.8 Example of Back-Propagation 347 12.9 Termination Criteria 349 12.10 Learning Rate 350 12.11 Momentum Term 351 12.12 Sensitivity Analysis 353 12.13 Application of Neural Network Modeling 353 CHAPTER 13 LOGISTIC REGRESSION 359 13.1 Simple Example of Logistic Regression 359 13.2 Maximum Likelihood Estimation 361 13.3 Interpreting Logistic Regression Output 362 13.4 Inference: are the Predictors Significant? 363 13.5 Odds Ratio and Relative Risk 365 13.6 Interpreting Logistic Regression for a Dichotomous Predictor 367 13.7 Interpreting Logistic Regression for a Polychotomous Predictor 370 13.8 Interpreting Logistic Regression for a Continuous Predictor 374 13.9 Assumption of Linearity 378 13.10 Zero-Cell Problem 382 13.11 Multiple Logistic Regression 384 13.12 Introducing Higher Order Terms to Handle Nonlinearity 388 13.13 Validating the Logistic Regression Model 395 13.14 WEKA: Hands-On Analysis Using Logistic Regression 399 CHAPTER 14 NAÏVE BAYES AND BAYESIAN NETWORKS 414 14.1 Bayesian Approach 414 14.2 Maximum a Posteriori (Map) Classification 416 14.3 Posterior Odds Ratio 420 14.4 Balancing the Data 422 14.5 Naïve Bayes Classification 423 14.6 Interpreting the Log Posterior Odds Ratio 426 14.7 Zero-Cell Problem 428 14.8 Numeric Predictors for Naïve Bayes Classification 429 14.9 WEKA: Hands-on Analysis Using Naïve Bayes 432 14.10 Bayesian Belief Networks 436 14.11 Clothing Purchase Example 436 14.12 Using the Bayesian Network to Find Probabilities 439 CHAPTER 15 MODEL EVALUATION TECHNIQUES 451 15.1 Model Evaluation Techniques for the Description Task 451 15.2 Model Evaluation Techniques for the Estimation and Prediction Tasks 452 15.3 Model Evaluation Measures for the Classification Task 454 15.4 Accuracy and Overall Error Rate 456 15.5 Sensitivity and Specificity 457 15.6 False-Positive Rate and False-Negative Rate 458 15.7 Proportions of True Positives, True Negatives, False Positives, and False Negatives 458 15.8 Misclassification Cost Adjustment to Reflect Real-World Concerns 460 15.9 Decision Cost/Benefit Analysis 462 15.10 Lift Charts and Gains Charts 463 15.11 Interweaving Model Evaluation with Model Building 466 15.12 Confluence of Results: Applying a Suite of Models 466 CHAPTER 16 COST-BENEFIT ANALYSIS USING DATA-DRIVEN COSTS 471 16.1 Decision Invariance Under Row Adjustment 471 16.2 Positive Classification Criterion 473 16.3 Demonstration of the Positive Classification Criterion 474 16.4 Constructing the Cost Matrix 474 16.5 Decision Invariance Under Scaling 476 16.6 Direct Costs and Opportunity Costs 478 16.7 Case Study: Cost-Benefit Analysis Using Data-Driven Misclassification Costs 478 16.8 Rebalancing as a Surrogate for Misclassification Costs 483 CHAPTER 17 COST-BENEFIT ANALYSIS FOR TRINARY AND k-NARY CLASSIFICATION MODELS 491 17.1 Classification Evaluation Measures for a Generic Trinary Target 491 17.2 Application of Evaluation Measures for Trinary Classification to the Loan Approval Problem 494 17.3 Data-Driven Cost-Benefit Analysis for Trinary Loan Classification Problem 498 17.4 Comparing Cart Models with and without Data-Driven Misclassification Costs 500 17.5 Classification Evaluation Measures for a Generic k-Nary Target 503 17.6 Example of Evaluation Measures and Data-Driven Misclassification Costs for k-Nary Classification 504 CHAPTER 18 GRAPHICAL EVALUATION OF CLASSIFICATION MODELS 510 18.1 Review of Lift Charts and Gains Charts 510 18.2 Lift Charts and Gains Charts Using Misclassification Costs 510 18.3 Response Charts 511 18.4 Profits Charts 512 18.5 Return on Investment (ROI) Charts 514 PART IV CLUSTERING 521 CHAPTER 19 HIERARCHICAL AND k-MEANS CLUSTERING 523 19.1 The Clustering Task 523 19.2 Hierarchical Clustering Methods 525 19.3 Single-Linkage Clustering 526 19.4 Complete-Linkage Clustering 527 19.5 k-Means Clustering 529 19.6 Example of k-Means Clustering at Work 530 19.7 Behavior of MSB, MSE, and Pseudo-F as the k-Means Algorithm Proceeds 533 19.8 Application of k-Means Clustering Using SAS Enterprise Miner 534 19.9 Using Cluster Membership to Predict Churn 537 CHAPTER 20 KOHONEN NETWORKS 542 20.1 Self-Organizing Maps 542 20.2 Kohonen Networks 544 20.3 Example of a Kohonen Network Study 545 20.4 Cluster Validity 549 20.5 Application of Clustering Using Kohonen Networks 549 20.6 Interpreting The Clusters 551 20.7 Using Cluster Membership as Input to Downstream Data Mining Models 556 CHAPTER 21 BIRCH CLUSTERING 560 21.1 Rationale for Birch Clustering 560 21.2 Cluster Features 561 21.3 Cluster Feature Tree 562 21.4 Phase 1: Building the CF Tree 562 21.5 Phase 2: Clustering the Sub-Clusters 564 21.6 Example of Birch Clustering, Phase 1: Building the CF Tree 565 21.7 Example of Birch Clustering, Phase 2: Clustering the Sub-Clusters 570 21.8 Evaluating the Candidate Cluster Solutions 571 21.9 Case Study: Applying Birch Clustering to the Bank Loans Data Set 571 CHAPTER 22 MEASURING CLUSTER GOODNESS 582 22.1 Rationale for Measuring Cluster Goodness 582 22.2 The Silhouette Method 583 22.3 Silhouette Example 584 22.4 Silhouette Analysis of the IRIS Data Set 585 22.5 The Pseudo-F Statistic 590 22.6 Example of the Pseudo-F Statistic 591 22.7 Pseudo-F Statistic Applied to the IRIS Data Set 592 22.8 Cluster Validation 593 22.9 Cluster Validation Applied to the Loans Data Set 594 PART V ASSOCIATION RULES 601 CHAPTER 23 ASSOCIATION RULES 603 23.1 Affinity Analysis and Market Basket Analysis 603 23.2 Support, Confidence, Frequent Itemsets, and the a Priori Property 605 23.3 How Does the A Priori Algorithm Work (Part 1)? Generating Frequent Itemsets 607 23.4 How Does the A Priori Algorithm Work (Part 2)? Generating Association Rules 608 23.5 Extension from Flag Data to General Categorical Data 611 23.6 Information-Theoretic Approach: Generalized Rule Induction Method 612 23.7 Association Rules are Easy to do Badly 614 23.8 How can we Measure the Usefulness of Association Rules? 615 23.9 Do Association Rules Represent Supervised or Unsupervised Learning? 616 23.10 Local Patterns Versus Global Models 617 PART VI ENHANCING MODEL PERFORMANCE 623 CHAPTER 24 SEGMENTATION MODELS 625 24.1 The Segmentation Modeling Process 625 24.2 Segmentation Modeling Using EDA to Identify the Segments 627 24.3 Segmentation Modeling using Clustering to Identify the Segments 629 CHAPTER 25 ENSEMBLE METHODS: BAGGING AND BOOSTING 637 25.1 Rationale for Using an Ensemble of Classification Models 637 25.2 Bias, Variance, and Noise 639 25.3 When to Apply, and not to apply, Bagging 640 25.4 Bagging 641 25.5 Boosting 643 25.6 Application of Bagging and Boosting Using IBM/SPSS Modeler 647 CHAPTER 26 MODEL VOTING AND PROPENSITY AVERAGING 653 26.1 Simple Model Voting 653 26.2 Alternative Voting Methods 654 26.3 Model Voting Process 655 26.4 An Application of Model Voting 656 26.5 What is Propensity Averaging? 660 26.6 Propensity Averaging Process 661 26.7 An Application of Propensity Averaging 661 PART VII FURTHER TOPICS 669 CHAPTER 27 GENETIC ALGORITHMS 671 27.1 Introduction To Genetic Algorithms 671 27.2 Basic Framework of a Genetic Algorithm 672 27.3 Simple Example of a Genetic Algorithm at Work 673 27.4 Modifications and Enhancements: Selection 676 27.5 Modifications and Enhancements: Crossover 678 27.6 Genetic Algorithms for Real-Valued Variables 679 27.7 Using Genetic Algorithms to Train a Neural Network 681 27.8 WEKA: Hands-On Analysis Using Genetic Algorithms 684 CHAPTER 28 IMPUTATION OF MISSING DATA 695 28.1 Need for Imputation of Missing Data 695 28.2 Imputation of Missing Data: Continuous Variables 696 28.3 Standard Error of the Imputation 699 28.4 Imputation of Missing Data: Categorical Variables 700 28.5 Handling Patterns in Missingness 701 PART VIII CASE STUDY: PREDICTING RESPONSE TO DIRECT-MAIL MARKETING 705 CHAPTER 29 CASE STUDY, PART 1: BUSINESS UNDERSTANDING, DATA PREPARATION, AND EDA 707 29.1 Cross-Industry Standard Practice for Data Mining 707 29.2 Business Understanding Phase 709 29.3 Data Understanding Phase, Part 1: Getting a Feel for the Data Set 710 29.4 Data Preparation Phase 714 29.5 Data Understanding Phase, Part 2: Exploratory Data Analysis 721 CHAPTER 30 CASE STUDY, PART 2: CLUSTERING AND PRINCIPAL COMPONENTS ANALYSIS 732 30.1 Partitioning the Data 732 30.2 Developing the Principal Components 733 30.3 Validating the Principal Components 737 30.4 Profiling the Principal Components 737 30.5 Choosing the Optimal Number of Clusters Using Birch Clustering 742 30.6 Choosing the Optimal Number of Clusters Using k-Means Clustering 744 30.7 Application of k-Means Clustering 745 30.8 Validating the Clusters 745 30.9 Profiling the Clusters 745 CHAPTER 31 CASE STUDY, PART 3: MODELING AND EVALUATION FOR PERFORMANCE AND INTERPRETABILITY 749 31.1 Do you Prefer the Best Model Performance, or a Combination of Performance and Interpretability? 749 31.2 Modeling and Evaluation Overview 750 31.3 Cost-Benefit Analysis Using Data-Driven Costs 751 31.4 Variables to be Input to the Models 753 31.5 Establishing the Baseline Model Performance 754 31.6 Models that use Misclassification Costs 755 31.7 Models that Need Rebalancing as a Surrogate for Misclassification Costs 756 31.8 Combining Models Using Voting and Propensity Averaging 757 31.9 Interpreting the Most Profitable Model 758 CHAPTER 32 CASE STUDY, PART 4: MODELING AND EVALUATION FOR HIGH PERFORMANCE ONLY 762 32.1 Variables to be Input to the Models 762 32.2 Models that use Misclassification Costs 762 32.3 Models that Need Rebalancing as a Surrogate for Misclassification Costs 764 32.4 Combining Models using Voting and Propensity Averaging 765 32.5 Lessons Learned 766 32.6 Conclusions 766 APPENDIX A DATA SUMMARIZATION AND VISUALIZATION 768 Part 1: Summarization 1: Building Blocks of Data Analysis 768 Part 2: Visualization: Graphs and Tables for Summarizing and Organizing Data 770 Part 3: Summarization 2: Measures of Center, Variability, and Position 774 Part 4: Summarization and Visualization of Bivariate Relationships 777 INDEX 781 |
520 ## - SUMMARY, ETC. | |
Summary, etc. | This updated second edition serves as an introduction to data mining methods and models, including association rules, clustering, neural networks, logistic regression, and multivariate analysis. The authors apply a unified “white box” approach to data mining methods and models. This approach is designed to walk readers through the operations and nuances of the various methods, using small data sets, so readers can gain an insight into the inner workings of the method under review. Chapters provide readers with hands-on analysis problems, representing an opportunity for readers to apply their newly-acquired data mining expertise to solving real problems using large, real-world data sets. Data Mining and Predictive Analytics: Offers comprehensive coverage of association rules, clustering, neural networks, logistic regression, multivariate analysis, and R statistical programming language Features over 750 chapter exercises, allowing readers to assess their understanding of the new material Provides a detailed case study that brings together the lessons learned in the book Includes access to the companion website, www.dataminingconsultant, with exclusive password-protected instructor content Data Mining and Predictive Analytics will appeal to computer science and statistic students, as well as students in MBA programs, and chief executives.taken from Publisher's website. |
650 #0 - SUBJECT ADDED ENTRY--TOPICAL TERM | |
Topical term or geographic name entry element | Data mining. |
650 #0 - SUBJECT ADDED ENTRY--TOPICAL TERM | |
Topical term or geographic name entry element | Prediction theory. |
700 1# - ADDED ENTRY--PERSONAL NAME | |
Personal name | Larose, Chantal D., |
Relator term | author. |
856 ## - ELECTRONIC LOCATION AND ACCESS | |
Materials specified | Publisher's Description and content page |
Uniform Resource Identifier | https://www.wiley.com/en-us/Data+Mining+and+Predictive+Analytics%2C+2nd+Edition-p-9781118116197 |
942 ## - ADDED ENTRY ELEMENTS (KOHA) | |
Source of classification or shelving scheme | |
Koha item type | Monograph |
Withdrawn status | Lost status | Source of classification or shelving scheme | Materials specified (bound volume or other part) | Damaged status | Not for loan | Permanent Location | Current Location | Shelving location | Date acquired | Source of acquisition | Cost, normal purchase price | Inventory number | Total Checkouts | Full call number | Barcode | Date last seen | Date last checked out | Copy number | Cost, replacement price | Price effective from | Koha item type |
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hbk. | Indian Institute of Management Udaipur | Indian Institute of Management Udaipur | A1/5 | 2021-08-24 | 20 | 8749.00 | IN-148 - 16/07/2021 | 3 | 006.312 LDT | 005175 | 2023-08-21 | 2023-08-07 | 1 | 8749.00 | 2021-08-24 | Monograph |