Algorithmic Learning in a Random World
Produktinformationen "Algorithmic Learning in a Random World"
Algorithmic Learning in a Random World describes recent theoretical and experimental developments in building computable approximations to Kolmogorov's algorithmic notion of randomness. Based on these approximations, a new set of machine learning algorithms have been developed that can be used to make predictions and to estimate their confidence and credibility in high-dimensional spaces under the usual assumption that the data are independent and identically distributed (assumption of randomness). Another aim of this unique monograph is to outline some limits of predictions: The approach based on algorithmic theory of randomness allows for the proof of impossibility of prediction in certain situations. The book describes how several important machine learning problems, such as density estimation in high-dimensional spaces, cannot be solved if the only assumption is randomness.
Autor: | Gammerman, Alex Shafer, Glenn Vovk, Vladimir |
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ISBN: | 9781441934710 |
Verlag: | Springer US |
Sprache: | Englisch |
Seitenzahl: | 324 |
Produktart: | Kartoniert / Broschiert |
Erscheinungsdatum: | 29.10.2010 |
Verlag: | Springer US |
Schlagworte: | Algorithmen und Datenstrukturen Approximation Artificial Intelligence C Computer Science Conformal prediction Data Structures and Information Theory Informationstheorie Mathematische und statistische Software Randomness Regression Statistics and Computing Statistics and Computing/Statistics Programs Wahrscheinlichkeitsrechnung und Statistik algorithms classification learning machine learning modeling |