Realtime Data Mining, 1st Edition

  • Published By:
  • ISBN-10: 3319013211
  • ISBN-13: 9783319013213
  • DDC: 006.312
  • Grade Level Range: College Freshman - College Senior
  • 313 Pages | eBook
  • Original Copyright 2013 | Published/Released July 2014
  • This publication's content originally published in print form: 2013

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​​​​Describing novel mathematical concepts for recommendation engines, Realtime Data Mining: Self-Learning Techniques for Recommendation Engines features a sound mathematical framework unifying approaches based on control and learning theories, tensor factorization, and hierarchical methods. Furthermore, it presents promising results of numerous experiments on real-world data.​ The area of realtime data mining is currently developing at an exceptionally dynamic pace, and realtime data mining systems are the counterpart of today's "classic" data mining systems. Whereas the latter learn from historical data and then use it to deduce necessary actions, realtime analytics systems learn and act continuously and autonomously. In the vanguard of these new analytics systems are recommendation engines. They are principally found on the Internet, where all information is available in realtime and an immediate feedback is guaranteed.  This monograph appeals to computer scientists and specialists in machine learning, especially from the area of recommender systems, because it conveys a new way of realtime thinking by considering recommendation tasks as control-theoretic problems. Realtime Data Mining: Self-Learning Techniques for Recommendation Engines will also interest application-oriented mathematicians because it consistently combines some of the most promising mathematical areas, namely control theory, multilevel approximation, and tensor factorization.

Table of Contents

Front Cover.
Half Title Page.
Applied and Numerical Harmonic Analysis.
Title Page.
Copyright Page.
ANHA Series Preface.
Summary of Notation.
1: Brave New Realtime World: Introduction.
2: Strange Recommendations? On the Weaknesses of Current Recommendation Engines.
3: Changing Not Just Analyzing: Control Theory and Reinforcement Learning.
4: Recommendations as a Game: Reinforcement Learning for Recommendation Engines.
5: How Engines Learn to Generate Recommendations: Adaptive Learning Algorithms.
6: Up the Down Staircase: Hierarchical Reinforcement Learning.
7: Breaking Dimensions: Adaptive Scoring With Sparse Grids.
8: Decomposition in Transition: Adaptive Matrix Factorization.
9: Decomposition in Transition II: Adaptive Tensor Factorization.
10: The Big Picture: Toward a Synthesis of RL and Adaptive Tensor Factorization.
11: What Cannot Be Measured Cannot Be Controlled: Gauging Success With A/B Tests.
12: Building a Recommendation Engine: The XELOPES Library.
13: Last Words: Conclusion.
ERRATUM TO: Realtime Data Mining Self-Learning Techniques for Recommendation Engines.
Applied and Numerical Harmonic Analysis (65 Volumes).