Data mining and predictive analytics

By: Material type: TextTextPublication details: New Delhi Wiley 2015Edition: 2Description: xix, 794 p. 24 cm ; HardISBN:
  • 9781118116297
Subject(s): DDC classification:
  • 658.4038 LAR
Online resources:
Contents:
1. An introduction to data mining and predictive analytics 2. Data pre-processing 3. Exploratory data analysis 4. Dimension-reduction methods 5. Univariate statistical analysis 6. Multivariate statistics 7. Preparing to model the data 8. Simple linear regression 9. Multiple regression and model building 10. K- nearest neighbour algorithm 11. Decision trees 12. Neural networks 13. Logistic regression 14. Naïve bayes and Bayesian networks 15. Model evaluation techniques 16. Cost- benefit analysis using data-driven costs 17. Cost benefit analysis for trainary and k-nary classification models 18. Graphical evaluation of classification models 19. Hierarchical and k-means clustering 20. Kohonen networks 21. Birch clustering 22. Measuring cluster goodness 23. Association rules 24. Segmentation models 25. Ensemable methods: bagging and boosting 26. Model voting and propensity averaging 27. Genetic algorthms 28. Imputation of missing data 29. Case study Part.1 business understanding data preparation and EDA 30. Case study Part 2 clustering and principal components analysis 31. Case study Part.3 Modelling and evaluation for performance and interpretability 32. Case study Part.4 Modelling and evaluation for high performance only.
Summary: Learn methods of data analysis and their application to real-world data sets 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.
Tags from this library: No tags from this library for this title. Log in to add tags.

Alpha 2255/191115/Rs.9,600/-

1. An introduction to data mining and predictive analytics
2. Data pre-processing
3. Exploratory data analysis
4. Dimension-reduction methods
5. Univariate statistical analysis
6. Multivariate statistics
7. Preparing to model the data
8. Simple linear regression
9. Multiple regression and model building
10. K- nearest neighbour algorithm
11. Decision trees
12. Neural networks
13. Logistic regression
14. Naïve bayes and Bayesian networks
15. Model evaluation techniques
16. Cost- benefit analysis using data-driven costs
17. Cost benefit analysis for trainary and k-nary classification models
18. Graphical evaluation of classification models
19. Hierarchical and k-means clustering
20. Kohonen networks
21. Birch clustering
22. Measuring cluster goodness
23. Association rules
24. Segmentation models
25. Ensemable methods: bagging and boosting
26. Model voting and propensity averaging
27. Genetic algorthms
28. Imputation of missing data
29. Case study Part.1 business understanding data preparation and EDA
30. Case study Part 2 clustering and principal components analysis
31. Case study Part.3 Modelling and evaluation for performance and interpretability
32. Case study Part.4 Modelling and evaluation for high performance only.

Learn methods of data analysis and their application to real-world data sets 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.

There are no comments on this title.

to post a comment.

Copyright @ 2024  |  All rights reserved, H.T. Parekh Library, Krea University, Sri City