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SGM: Sequence Generation Model for Multi-label Classification

About

Multi-label classification is an important yet challenging task in natural language processing. It is more complex than single-label classification in that the labels tend to be correlated. Existing methods tend to ignore the correlations between labels. Besides, different parts of the text can contribute differently for predicting different labels, which is not considered by existing models. In this paper, we propose to view the multi-label classification task as a sequence generation problem, and apply a sequence generation model with a novel decoder structure to solve it. Extensive experimental results show that our proposed methods outperform previous work by a substantial margin. Further analysis of experimental results demonstrates that the proposed methods not only capture the correlations between labels, but also select the most informative words automatically when predicting different labels.

Pengcheng Yang, Xu Sun, Wei Li, Shuming Ma, Wei Wu, Houfeng Wang• 2018

Related benchmarks

TaskDatasetResultRank
Multi-label emotion classificationSemEval Task 1:E-c 2018 (test)
Macro F141.1
53
Multi-label Text ClassificationAAPD latest (test)
MicroF171
18
Multi-label Text ClassificationIndonesian dataset
Macro F144.08
11
Emotion ClassificationSemEval Task 1 English 2018 (test)
Macro F149.2
10
Multi-label emotion classificationTwitter 64 emojis (test)
Accuracy33.5
4
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