Fine-grained emotion detection in suicide notes: a thresholding approach to multi-label classification.

Biomedical informatics insights Pub Date : 2012-01-01 Epub Date: 2012-01-30 DOI:10.4137/BII.S8966
Kim Luyckx, Frederik Vaassen, Claudia Peersman, Walter Daelemans
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引用次数: 28

Abstract

We present a system to automatically identify emotion-carrying sentences in suicide notes and to detect the specific fine-grained emotion conveyed. With this system, we competed in Track 2 of the 2011 Medical NLP Challenge,14 where the task was to distinguish between fifteen emotion labels, from guilt, sorrow, and hopelessness to hopefulness and happiness.Since a sentence can be annotated with multiple emotions, we designed a thresholding approach that enables assigning multiple labels to a single instance. We rely on the probability estimates returned by an SVM classifier and experimentally set thresholds on these probabilities. Emotion labels are assigned only if their probability exceeds a certain threshold and if the probability of the sentence being emotion-free is low enough. We show the advantages of this thresholding approach by comparing it to a naïve system that assigns only the most probable label to each test sentence, and to a system trained on emotion-carrying sentences only.

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Abstract Image

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遗书中的细粒度情感检测:多标签分类的阈值方法。
我们提出了一个系统来自动识别遗书中带有情感的句子,并检测所传达的特定细粒度的情感。有了这个系统,我们参加了2011年医学NLP挑战赛的第二阶段比赛,其中的任务是区分15种情绪标签,从内疚、悲伤、绝望到希望和幸福。由于一个句子可以用多种情绪进行注释,我们设计了一种阈值方法,可以为单个实例分配多个标签。我们依赖于SVM分类器返回的概率估计,并在这些概率上实验设置阈值。只有当它们的概率超过一定的阈值,并且句子没有情绪的概率足够低时,才会分配情绪标签。我们通过将这种阈值方法与只为每个测试句子分配最可能标签的naïve系统以及只对带有情感的句子进行训练的系统进行比较,展示了这种阈值方法的优点。
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