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Papers/Label-aware Document Representation via Hybrid Attention f...

Label-aware Document Representation via Hybrid Attention for Extreme Multi-Label Text Classification

Xin Huang, Boli Chen, Lin Xiao, Liping Jing

2019-05-24Text ClassificationMulti Label Text Classificationtext-classificationGeneral ClassificationMulti-Label Text Classification
PaperPDFCode(official)

Abstract

Extreme multi-label text classification (XMTC) aims at tagging a document with most relevant labels from an extremely large-scale label set. It is a challenging problem especially for the tail labels because there are only few training documents to build classifier. This paper is motivated to better explore the semantic relationship between each document and extreme labels by taking advantage of both document content and label correlation. Our objective is to establish an explicit label-aware representation for each document with a hybrid attention deep neural network model(LAHA). LAHA consists of three parts. The first part adopts a multi-label self-attention mechanism to detect the contribution of each word to labels. The second part exploits the label structure and document content to determine the semantic connection between words and labels in a same latent space. An adaptive fusion strategy is designed in the third part to obtain the final label-aware document representation so that the essence of previous two parts can be sufficiently integrated. Extensive experiments have been conducted on six benchmark datasets by comparing with the state-of-the-art methods. The results show the superiority of our proposed LAHA method, especially on the tail labels.

Results

TaskDatasetMetricValueModel
Multi-Label Text ClassificationAAPDP@184.48LAHA
Multi-Label Text ClassificationAAPDP@360.72LAHA
Multi-Label Text ClassificationAAPDP@541.19LAHA
Multi-Label Text ClassificationAAPDnDCG@380.11LAHA
Multi-Label Text ClassificationAAPDnDCG@583.7LAHA
Multi-Label Text ClassificationWiki-30KP@184.18LAHA
Multi-Label Text ClassificationWiki-30KP@373.14LAHA
Multi-Label Text ClassificationWiki-30KP@562.87LAHA
Multi-Label Text ClassificationWiki-30KnDCG@375.64LAHA
Multi-Label Text ClassificationWiki-30KnDCG@567.82LAHA
Multi-Label Text ClassificationKan-Shan CupP@154.38LAHA
Multi-Label Text ClassificationKan-Shan CupP@334.6LAHA
Multi-Label Text ClassificationKan-Shan CupP@525.88LAHA
Multi-Label Text ClassificationKan-Shan CupnDCG@351.7LAHA
Multi-Label Text ClassificationKan-Shan CupnDCG@554.65LAHA
Multi-Label Text ClassificationEUR-LexP@174.95LAHA
Multi-Label Text ClassificationEUR-LexP@361.48LAHA
Multi-Label Text ClassificationEUR-LexP@550.71LAHA
Multi-Label Text ClassificationEUR-LexnDCG@364.89LAHA
Multi-Label Text ClassificationEUR-LexnDCG@559.28LAHA
Multi-Label Text ClassificationAmazon-12KP@194.87LAHA
Multi-Label Text ClassificationAmazon-12KP@379.16LAHA
Multi-Label Text ClassificationAmazon-12KP@563.16LAHA
Multi-Label Text ClassificationAmazon-12KnDCG@389.13LAHA
Multi-Label Text ClassificationAmazon-12KnDCG@587.57LAHA
Text ClassificationAAPDP@184.48LAHA
Text ClassificationAAPDP@360.72LAHA
Text ClassificationAAPDP@541.19LAHA
Text ClassificationAAPDnDCG@380.11LAHA
Text ClassificationAAPDnDCG@583.7LAHA
Text ClassificationWiki-30KP@184.18LAHA
Text ClassificationWiki-30KP@373.14LAHA
Text ClassificationWiki-30KP@562.87LAHA
Text ClassificationWiki-30KnDCG@375.64LAHA
Text ClassificationWiki-30KnDCG@567.82LAHA
Text ClassificationKan-Shan CupP@154.38LAHA
Text ClassificationKan-Shan CupP@334.6LAHA
Text ClassificationKan-Shan CupP@525.88LAHA
Text ClassificationKan-Shan CupnDCG@351.7LAHA
Text ClassificationKan-Shan CupnDCG@554.65LAHA
Text ClassificationEUR-LexP@174.95LAHA
Text ClassificationEUR-LexP@361.48LAHA
Text ClassificationEUR-LexP@550.71LAHA
Text ClassificationEUR-LexnDCG@364.89LAHA
Text ClassificationEUR-LexnDCG@559.28LAHA
Text ClassificationAmazon-12KP@194.87LAHA
Text ClassificationAmazon-12KP@379.16LAHA
Text ClassificationAmazon-12KP@563.16LAHA
Text ClassificationAmazon-12KnDCG@389.13LAHA
Text ClassificationAmazon-12KnDCG@587.57LAHA
ClassificationAAPDP@184.48LAHA
ClassificationAAPDP@360.72LAHA
ClassificationAAPDP@541.19LAHA
ClassificationAAPDnDCG@380.11LAHA
ClassificationAAPDnDCG@583.7LAHA
ClassificationWiki-30KP@184.18LAHA
ClassificationWiki-30KP@373.14LAHA
ClassificationWiki-30KP@562.87LAHA
ClassificationWiki-30KnDCG@375.64LAHA
ClassificationWiki-30KnDCG@567.82LAHA
ClassificationKan-Shan CupP@154.38LAHA
ClassificationKan-Shan CupP@334.6LAHA
ClassificationKan-Shan CupP@525.88LAHA
ClassificationKan-Shan CupnDCG@351.7LAHA
ClassificationKan-Shan CupnDCG@554.65LAHA
ClassificationEUR-LexP@174.95LAHA
ClassificationEUR-LexP@361.48LAHA
ClassificationEUR-LexP@550.71LAHA
ClassificationEUR-LexnDCG@364.89LAHA
ClassificationEUR-LexnDCG@559.28LAHA
ClassificationAmazon-12KP@194.87LAHA
ClassificationAmazon-12KP@379.16LAHA
ClassificationAmazon-12KP@563.16LAHA
ClassificationAmazon-12KnDCG@389.13LAHA
ClassificationAmazon-12KnDCG@587.57LAHA

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