Hidden Markov Models with Applications in Computational Biology: Model Extensions and Advanced Analysis of Dna Microarray Data - Michael Seifert - Books - Südwestdeutscher Verlag für Hochschulsch - 9783838136042 - January 2, 2013
In case cover and title do not match, the title is correct

Hidden Markov Models with Applications in Computational Biology: Model Extensions and Advanced Analysis of Dna Microarray Data

Michael Seifert

Price
S$ 95.50
excl. VAT

Ordered from remote warehouse

Expected delivery Aug 11 - 21
Add to your iMusic wish list

Hidden Markov Models with Applications in Computational Biology: Model Extensions and Advanced Analysis of Dna Microarray Data

Standard first-order Hidden Markov Models (HMMs) are very popular tools for the analysis of sequential data in applied sciences. HMMs are versatile and structurally simple models enabling probabilistic modeling based on a sound theoretical grounding. In contrast to the broad usage of first-order HMMs, applications of higher-order HMMs are very rare, but they have been proven to be powerful extensions of first-order HMMs including applications in speech recognition, image segmentation or computational biology. This book provides the first easily accessible and comprehensive extension of the algorithmic basics of first-order HMMs to higher-order HMMs coupled with practical applications in computational biology. The book starts with a theoretical part developing the algorithmic basics of higher-order HMMs and two novel model extensions (i) parsimonious higher-order HMMs and (ii) HMMs with scaled transition matrices. The second part considers applications of these models to the analysis of different DNA microarray data sets followed by a detailed discussion. The book addresses readers having basic knowledge on first-order HMMs interested to gain more insights on higher-order HMMs.

Media Books     Paperback Book   (Book with soft cover and glued back)
Released January 2, 2013
ISBN13 9783838136042
Publishers Südwestdeutscher Verlag für Hochschulsch
Pages 184
Dimensions 150 × 11 × 226 mm   ·   292 g
Language German  

Show all

More by Michael Seifert