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Statistical Modelling Of Molecular Descriptors In Qsarqspr Volume 2 M Dehmer

  • SKU: BELL-4312462
Statistical Modelling Of Molecular Descriptors In Qsarqspr Volume 2 M Dehmer
$ 31.00 $ 45.00 (-31%)

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Statistical Modelling Of Molecular Descriptors In Qsarqspr Volume 2 M Dehmer instant download after payment.

Publisher: Wiley-Blackwell
File Extension: PDF
File size: 5.43 MB
Pages: 447
Author: M. Dehmer, F. Emmert?Streib(eds.)
ISBN: 9783527324347, 9783527645121, 3527324348, 3527645128
Language: English
Year: 2012

Product desciption

Statistical Modelling Of Molecular Descriptors In Qsarqspr Volume 2 M Dehmer by M. Dehmer, F. Emmert?streib(eds.) 9783527324347, 9783527645121, 3527324348, 3527645128 instant download after payment.

This handbook and ready reference presents a combination of statistical, information-theoretic, and data analysis methods to meet the challenge of designing empirical models involving molecular descriptors within bioinformatics. The topics range from investigating information processing in chemical and biological networks to studying statistical and information-theoretic techniques for analyzing chemical structures to employing data analysis and machine learning techniques for QSAR/QSPR.
The high-profile international author and editor team ensures excellent coverage of the topic, making this a must-have for everyone working in chemoinformatics and structure-oriented drug design.

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