A Framework for Context-Aware Semi Supervised Learning

Article ID

CSTSDE6013E

A Framework for Context-Aware Semi Supervised Learning

Vijaya Geeta Dharmavaram
Vijaya Geeta Dharmavaram GITAM Institute of Management, GITAM University
Shashi Mogalla
Shashi Mogalla
DOI

Abstract

Supervised learning techniques require large number of labeled examples to build a classifier which is often difficult and expensive to collect. Unsupervised learning techniques, even though do not require labeled examples often form clusters regardless of the intended purpose or context. The authors proposes a semi supervised learning framework that leverages the large number of unlabeled examples in addition to limited number of labeled examples to form clusters as per the context. This framework also supports the development of semi supervised classifier based on the proximity of unknown example to the clusters so formed. The authors proposes a new algorithm namely “Semi Supervised Relevance Feature Estimation”, (SFRE), to identify the relevant features along with their significance weightages which is integrated with the proposed framework. Experiments conducted on the benchmark datasets from UCI gave results which are very promising and consistent even with lesser number of labeled examples.

A Framework for Context-Aware Semi Supervised Learning

Supervised learning techniques require large number of labeled examples to build a classifier which is often difficult and expensive to collect. Unsupervised learning techniques, even though do not require labeled examples often form clusters regardless of the intended purpose or context. The authors proposes a semi supervised learning framework that leverages the large number of unlabeled examples in addition to limited number of labeled examples to form clusters as per the context. This framework also supports the development of semi supervised classifier based on the proximity of unknown example to the clusters so formed. The authors proposes a new algorithm namely “Semi Supervised Relevance Feature Estimation”, (SFRE), to identify the relevant features along with their significance weightages which is integrated with the proposed framework. Experiments conducted on the benchmark datasets from UCI gave results which are very promising and consistent even with lesser number of labeled examples.

Vijaya Geeta Dharmavaram
Vijaya Geeta Dharmavaram GITAM Institute of Management, GITAM University
Shashi Mogalla
Shashi Mogalla

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Vijaya Geeta Dharmavaram. 2014. “. Global Journal of Computer Science and Technology – C: Software & Data Engineering GJCST-C Volume 14 (GJCST Volume 14 Issue C1): .

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Crossref Journal DOI 10.17406/gjcst

Print ISSN 0975-4350

e-ISSN 0975-4172

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GJCST Volume 14 Issue C1
Pg. 61- 70
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A Framework for Context-Aware Semi Supervised Learning

Vijaya Geeta Dharmavaram
Vijaya Geeta Dharmavaram GITAM Institute of Management, GITAM University
Shashi Mogalla
Shashi Mogalla

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