<p><p>From basic performing of sequence alignment through a proficiency at understanding how most industry-standard alignment algorithms achieve their results, <i>Multiple Sequence Alignment Methods</i> describes numerous algorithms and their nuances in chapters written by the experts who developed
Parameter Advising for Multiple Sequence Alignment
β Scribed by Dan DeBlasio,John Kececioglu (auth.)
- Publisher
- Springer International Publishing
- Year
- 2017
- Tongue
- English
- Leaves
- 156
- Series
- Computational Biology 26
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
This book develops a new approach called parameter advising for finding a parameter setting for a sequence aligner that yields a quality alignment of a given set of input sequences. In this framework, a parameter advisor is a procedure that automatically chooses a parameter setting for the input, and has two main ingredients:
(a) the set of parameter choices considered by the advisor, and
(b) an estimator of alignment accuracy used to rank alignments produced by the aligner.
On coupling a parameter advisor with an aligner, once the advisor is trained in a learning phase, the user simply inputs sequences to align, and receives an output alignment from the aligner, where the advisor has automatically selected the parameter setting.
The chapters first lay out the foundations of parameter advising, and then cover applications and extensions of advising. The content
β’ examines formulations of parameter advising and their computational complexity,
β’ develops methods for learning good accuracy estimators,
β’ presents approximation algorithms for finding good sets of parameter choices, and
β’ assesses software implementations of advising that perform well on real biological data.
Also explored are applications of parameter advising to
β’ adaptive local realignment, where advising is performed on local regions of the sequences to automatically adapt to varying mutation rates, and
β’ ensemble alignment, where advising is applied to an ensemble of aligners to effectively yield a new aligner of higher quality than the individual aligners in the ensemble.
The book concludes by offering future directions in advising research.
β¦ Table of Contents
Front Matter ....Pages i-xiv
Introduction and Background (Dan DeBlasio, John Kececioglu)....Pages 1-15
Front Matter ....Pages 17-17
Alignment Accuracy Estimation (Dan DeBlasio, John Kececioglu)....Pages 19-27
The Facet Accuracy Estimator (Dan DeBlasio, John Kececioglu)....Pages 29-40
Computational Complexity of Advising (Dan DeBlasio, John Kececioglu)....Pages 41-49
Constructing Advisors (Dan DeBlasio, John Kececioglu)....Pages 51-61
Front Matter ....Pages 63-63
Parameter Advising for the Opal Aligner (Dan DeBlasio, John Kececioglu)....Pages 65-83
Ensemble Multiple Alignment (Dan DeBlasio, John Kececioglu)....Pages 85-102
Adaptive Local Realignment (Dan DeBlasio, John Kececioglu)....Pages 103-115
Core Column Prediction for Alignments (Dan DeBlasio, John Kececioglu)....Pages 117-137
Future Directions (Dan DeBlasio, John Kececioglu)....Pages 139-142
Back Matter ....Pages 143-152
β¦ Subjects
Computational Biology;Bioinformatics
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