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Defining Stochastic Inference To Improve Pattern Recognition
Details
Stochastic inference is defined as an accuracy measure over the decision of a learning algorithm. The typical accuracy measures used for pattern recognition are confidence and credibility. These measures are challenging to define, compute and exploit to improve pattern recognition. In this research we define a confidence and a credibility measure based on the VC dimension of a learning algorithm defined by Vapnik and Chervonenkis and the notion of algorithmic randomness as defined by Kolmogorov. The resulting confidence and credibility measures are applied to pattern recognition methods to improve their accuracy. This is accomplished by developing a multi-level architecture based on the defined confidence and credibility. In addition these defined measures are used to extend the binary classification of a single SVM to multi-class prediction. The benefits of the proposed architecture and the multi-class SVM are demonstrated on the following classification problems: agitation detection, the well known US postal handwritten digit recognition data and for forest fire occurrence prediction.
Autorentext
Received the B.E. degree (with distinction) in electrical engineering from the Lebanese University, in 2005, the M.S. degree in networking and telecommunications from the joint program between the Lebanese university and AUF and his PhD from the American University of Beirut.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09783659393686
- Sprache Englisch
- Größe H220mm x B150mm x T10mm
- Jahr 2013
- EAN 9783659393686
- Format Kartonierter Einband
- ISBN 3659393681
- Veröffentlichung 09.05.2013
- Titel Defining Stochastic Inference To Improve Pattern Recognition
- Autor George Sakr
- Gewicht 244g
- Herausgeber LAP LAMBERT Academic Publishing
- Anzahl Seiten 152
- Genre Mathematik