遗书情绪分类:一种由网络数据增强的监督方法。

Biomedical informatics insights Pub Date : 2012-01-01 Epub Date: 2012-01-30 DOI:10.4137/BII.S8956
Yan Xu, Yue Wang, Jiahua Liu, Zhuowen Tu, Jian-Tao Sun, Junichi Tsujii, Eric Chang
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引用次数: 11

摘要

目的:为第五届i2b2/VA挑战赛Track 2创建一个情感分类系统,该系统可以识别13个主观类别和2个客观类别。设计:我们开发了一个混合系统,使用支持向量机(SVM)分类器和来自互联网的增强训练数据。我们的系统由三种类型的基于分类的系统组成:第一个系统使用跨越n-gram特征进行主观分类,第二个系统使用n-gram袋特征进行客观分类,第三个系统使用模式匹配进行不频繁或微妙的情感类别。通过利用来自博客的情感语料库的特征选择算法来选择生成的n-gram特征。利用浅层解析和外部网络知识对客观句子的特殊规范化进行了推广。我们利用了三个网络数据来源:LiveJournal的weblog,它有助于改进特征选择;eBay List,它有助于对信息和指令类别进行特殊规范化;以及自杀项目web,它提供了与自杀笔记相似属性的未标记数据。测量:性能由整体微平均精度,召回率和f测量来评估。结果:我们的系统达到了0.59的整体微平均f测量值。“快乐-宁静”的f值最高,为0.81。我们在26支参赛队伍中排名第二。结论:我们的研究结果表明,在句子层面对细粒度情感进行分类是一项非常重要的任务。根据语义属性将类别划分为不同的组是有效的。此外,我们的系统性能受益于从其他目的的公开可用web数据中提取的外部知识;当有更多的训练数据可用时,性能可以进一步提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Suicide note sentiment classification: a supervised approach augmented by web data.

Suicide note sentiment classification: a supervised approach augmented by web data.

Suicide note sentiment classification: a supervised approach augmented by web data.

Objective: To create a sentiment classification system for the Fifth i2b2/VA Challenge Track 2, which can identify thirteen subjective categories and two objective categories.

Design: We developed a hybrid system using Support Vector Machine (SVM) classifiers with augmented training data from the Internet. Our system consists of three types of classification-based systems: the first system uses spanning n-gram features for subjective categories, the second one uses bag-of-n-gram features for objective categories, and the third one uses pattern matching for infrequent or subtle emotion categories. The spanning n-gram features are selected by a feature selection algorithm that leverages emotional corpus from weblogs. Special normalization of objective sentences is generalized with shallow parsing and external web knowledge. We utilize three sources of web data: the weblog of LiveJournal which helps to improve the feature selection, the eBay List which assists in special normalization of information and instructions categories, and the suicide project web which provides unlabeled data with similar properties as suicide notes.

Measurements: The performance is evaluated by the overall micro-averaged precision, recall and F-measure.

Result: Our system achieved an overall micro-averaged F-measure of 0.59. Happiness_peacefulness had the highest F-measure of 0.81. We were ranked as the second best out of 26 competing teams.

Conclusion: Our results indicated that classifying fine-grained sentiments at sentence level is a non-trivial task. It is effective to divide categories into different groups according to their semantic properties. In addition, our system performance benefits from external knowledge extracted from publically available web data of other purposes; performance can be further enhanced when more training data is available.

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