Please use this identifier to cite or link to this item: http://10.1.7.192:80/jspui/handle/123456789/5161
Title: Evaluation of Usefulness of Unlabeled Data in Learning a Recommender
Authors: Parmar, Vikas
Thakkar, Priyank
Kotecha, K.
Keywords: Classification
Recommender
Labeled and Unlabeled Examples
Co-Training
Computer Faculty Paper
Faculty Paper
ITFCE037
ITDIR001
Issue Date: Mar-2014
Publisher: IJCSC
Series/Report no.: ITFCE037-1;
Abstract: Supervised learning algorithms require labeled training examples from every class to engender a classification function. One of the shortcomings of this classical paradigm is that in order to learn the function accurately, a large number of labeled examples are needed. There are many situations (e.g. a new user in an online recommender system) where for every class,only a small set of labeled examples is available. Situations such as these encourage to investigate about the usefulness of unlabeled examples in learning a recommender. The main objective of this paper is to examine the influence on the accuracy of the recommender when it is built using unlabeled examples in addition to the labeled examples. Co-Training algorithm which allows to incorporate unlabeled examples while learning a classifier/recommender. Usefulness of this algorithm is investigated by means of experimental study using hetrec2011-movielens-2k data set.Accuracy and f-measure are used as the evaluation measures.
Description: International Journal of Computer Science & Communication (IJCSC), Vol. 5 (1), March - September, 2014, Page No. 121 - 125
URI: http://hdl.handle.net/123456789/5161
ISSN: 0973-7391
Appears in Collections:Faculty Papers, CE

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