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A Study of MatchPyramid Models on Ad-hoc Retrieval

Authors :
Pang, Liang
Lan, Yanyan
Guo, Jiafeng
Xu, Jun
Cheng, Xueqi
Publication Year :
2016

Abstract

Deep neural networks have been successfully applied to many text matching tasks, such as paraphrase identification, question answering, and machine translation. Although ad-hoc retrieval can also be formalized as a text matching task, few deep models have been tested on it. In this paper, we study a state-of-the-art deep matching model, namely MatchPyramid, on the ad-hoc retrieval task. The MatchPyramid model employs a convolutional neural network over the interactions between query and document to produce the matching score. We conducted extensive experiments to study the impact of different pooling sizes, interaction functions and kernel sizes on the retrieval performance. Finally, we show that the MatchPyramid models can significantly outperform several recently introduced deep matching models on the retrieval task, but still cannot compete with the traditional retrieval models, such as BM25 and language models.<br />Comment: Neu-IR '16 SIGIR Workshop on Neural Information Retrieval

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1606.04648
Document Type :
Working Paper