Title :
Comparison of Performance for SVM Based Relevance Feedback Document Retrieval in Several Vector Space Models
Author :
Onoda, Takashi ; Murata, Hiroshi ; Yamada, Seiji
Author_Institution :
Central Res. Inst. of Electr. Power Ind., Komae
Abstract :
We investigate the following data mining problems from the document retrieval: From a large data set of documents, we need to find documents that relate to human interest as few iterations of human testing or checking as possible. In each iteration a comparatively small batch of documents is evaluated for relating to the human interest. We apply active learning techniques based on Support Vector Machine for evaluating successive batches, which is called relevance feedback. Our proposed approach has been very useful for document retrieval with relevance feedback experimentally. In this paper, we adopt several Vector Space Models into our proposed method, and then show the comparison results of the performance of our method in several Vector Space Models.
Keywords :
data mining; iterative methods; learning (artificial intelligence); relevance feedback; support vector machines; active learning technique; data mining; document retrieval; human testing; iterative method; large data set; performance comparison; relevance feedback; support vector machine; vector space model; Aerospace industry; Data mining; Displays; Feedback; Humans; Information retrieval; Intelligent agent; Mining industry; Space technology; Support vector machines; document retrieval; relevance feedback; support vector machine; vector space model;
Conference_Titel :
Web Intelligence and Intelligent Agent Technology, 2008. WI-IAT '08. IEEE/WIC/ACM International Conference on
Conference_Location :
Sydney, NSW
Print_ISBN :
978-0-7695-3496-1
DOI :
10.1109/WIIAT.2008.101