An empirical study of ensemble-based semi-supervised learning approaches for imbalanced splice site datasets

Background Recent biochemical advances have led to inexpensive, time-efficient production of massive volumes of raw genomic data. Traditional machine learning approaches to genome annotation typically rely on large amounts of labeled data. The process of labeling data can be expensive, as it require...
Ausführliche Beschreibung

Gespeichert in:
Autor*in:

Stanescu, Ana [verfasserIn]

Caragea, Doina

Format:

E-Artikel

Sprache:

Englisch

Erschienen:

2015

Schlagwörter:

acceptor splice sites

semi-supervised learning

self-training

co-training

imbalanced data

ensemble learning

Anmerkung:

© Stanescu and Caragea. 2015

Übergeordnetes Werk:

Enthalten in: BMC systems biology - London : BioMed Central, 2007, 9(2015), Suppl 5 vom: 01. Sept.

Übergeordnetes Werk:

volume:9 ; year:2015 ; number:Suppl 5 ; day:01 ; month:09

Links:

Volltext

DOI / URN:

10.1186/1752-0509-9-S5-S1

Katalog-ID:

SPR028420675

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