"This textbook is a well-rounded, rigorous, and informative work presenting the mathematics behind modern machine learning techniques. It hits all the right notes: the choice of topics is up-to-date and perfect for a course on data science for mathematics students at the advanced undergraduate or ea
Statistical learning and data science
โ Scribed by Mireille Gettler Summa; et al
- Publisher
- Chapman & Hall/CRC
- Year
- 2011
- Tongue
- English
- Leaves
- 242
- Series
- Chapman & Hall/CRC computer science & data analysis
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
Data analysis is changing fast. Driven by a vast range of application domains and affordable tools, machine learning has become mainstream. Unsupervised data analysis, including cluster analysis, factor analysis, and low dimensionality mapping methods continually being updated, have reached new heights of achievement in the incredibly rich data world that we inhabit.
Statistical Learning and Data Science is a work of reference in the rapidly evolving context of converging methodologies. It gathers contributions from some of the foundational thinkers in the different fields of data analysis to the major theoretical results in the domain. On the methodological front, the volume includes conformal prediction and frameworks for assessing confidence in outputs, together with attendant risk. It illustrates a wide range of applications, including semantics, credit risk, energy production, genomics, and ecology. The book also addresses issues of origin and evolutions in the unsupervised data analysis arena, and presents some approaches for time series, symbolic data, and functional data.
Over the history of multidimensional data analysis, more and more complex data have become available for processing. Supervised machine learning, semi-supervised analysis approaches, and unsupervised data analysis, provide great capability for addressing the digital data deluge. Exploring the foundations and recent breakthroughs in the field, Statistical Learning and Data Science demonstrates how data analysis can improve personal and collective health and the well-being of our social, business, and physical environments.
โฆ Table of Contents
Title Page
......Page 4
Contents......Page 6
Preface......Page 8
Contributors......Page 14
I. Statistical and Machine Learning......Page 18
1. Mining on Social Networks......Page 20
2. Large-Scale Machine Learning with Stochastic Gradient Descent......Page 34
3. Fast Optimization Algorithms for Solving SVM+......Page 44
4. Conformal Predictors in Semisupervised Case......Page 60
5. Some Properties of Infinite VC-Dimension Systems......Page 70
II. Data Science, Foundations, and Applications......Page 78
6. Choriogenesis: the Dynamical Genesis of Space and Its Dimensions, Controlled by Correspondence Analysis......Page 80
7. Geometric Data Analysis in a Social Science Research Program: The Case of Bourdieu's Sociology......Page 94
8. Semantics from Narrative: State of the Art and Future Prospects......Page 108
9. Measuring Classifier Performance: On the Incoherence of the Area under the ROC Curve and What to Do about It......Page 120
10. A Clustering Approach to Monitor System Working: An Application to Electric Power Production......Page 130
11. Introduction to Molecular Phylogeny......Page 142
12. Bayesian Analysis of Structural Equation Models Using Parameter Expansion......Page 152
III. Complex Data......Page 164
13. Clustering Trajectories of a Three-Way Longitudinal Dataset......Page 166
14. Trees with Soft Nodes: A New Approach to the Construction of Prediction Trees from Data......Page 176
15. Synthesis of Objects......Page 188
16. Functional Data Analysis: An Interdisciplinary Statistical Topic......Page 206
17. Methodological Richness of Functional Data Analysis......Page 214
Bibliography......Page 222
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