Statistical Modeling and Machine Learning for Molecular Biology Statistical Modeling and Machine Learning for Molecular Biology
Chapman & Hall/CRC Mathematical and Computational Biology

Statistical Modeling and Machine Learning for Molecular Biology

    • ¥11,800
    • ¥11,800

Publisher Description

Molecular biologists are performing increasingly large and complicated experiments, but often have little background in data analysis. The book is devoted to teaching the statistical and computational techniques molecular biologists need to analyze their data. It explains the big-picture concepts in data analysis using a wide variety of real-world molecular biological examples such as eQTLs, ortholog identification, motif finding, inference of population structure, protein fold prediction and many more. The book takes a pragmatic approach, focusing on techniques that are based on elegant mathematics yet are the simplest to explain to scientists with little background in computers and statistics.

GENRE
Computers & Internet
RELEASED
2017
January 6
LANGUAGE
EN
English
LENGTH
280
Pages
PUBLISHER
CRC Press
SELLER
Taylor & Francis Group
SIZE
7.1
MB
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