一种naïve贝叶斯方法对遗书主题进行分类。

Biomedical informatics insights Pub Date : 2012-01-01 Epub Date: 2012-01-30 DOI:10.4137/BII.S8945
Irena Spasić, Pete Burnap, Mark Greenwood, Michael Arribas-Ayllon
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引用次数: 20

摘要

作者提出了一个为2011年i2b2情感分类挑战赛开发的系统,其目的是使用15个主题(主要是情感)的方案自动对遗书中的句子进行分类。该系统将机器学习与基于规则的方法相结合。用于表示问题的特征是基于单个单词的词汇语义属性,以及用于表示跨不同主题的单词使用模式的正则表达式。使用从600份手工标注的自杀笔记的训练数据中提取的特征训练naïve贝叶斯分类器。然后使用naïve贝叶斯分类器以及一组模式匹配规则进行分类。分类性能根据人工准备的金标准进行评估,该标准由300份遗书组成,其中总共2,037个句子中有1,091个与总共1,272个注释相关联。使用微平均f值作为主要评价指标对竞争系统进行排名。我们的系统达到了53%的F-measure(准确率为55%,召回率为52%),明显优于26个参赛团队48.75%的平均表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A naïve bayes approach to classifying topics in suicide notes.

A naïve bayes approach to classifying topics in suicide notes.

The authors present a system developed for the 2011 i2b2 Challenge on Sentiment Classification, whose aim was to automatically classify sentences in suicide notes using a scheme of 15 topics, mostly emotions. The system combines machine learning with a rule-based methodology. The features used to represent a problem were based on lexico-semantic properties of individual words in addition to regular expressions used to represent patterns of word usage across different topics. A naïve Bayes classifier was trained using the features extracted from the training data consisting of 600 manually annotated suicide notes. Classification was then performed using the naïve Bayes classifier as well as a set of pattern-matching rules. The classification performance was evaluated against a manually prepared gold standard consisting of 300 suicide notes, in which 1,091 out of a total of 2,037 sentences were associated with a total of 1,272 annotations. The competing systems were ranked using the micro-averaged F-measure as the primary evaluation metric. Our system achieved the F-measure of 53% (with 55% precision and 52% recall), which was significantly better than the average performance of 48.75% achieved by the 26 participating teams.

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