A Word-Scale Probabilistic Latent Variable Model for Detecting Human Values

Yasuhiro Takayama, Yoichi Tomiura, Emi Ishita, Douglas W. Oard, K. Fleischmann, An-Shou Cheng
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引用次数: 10

Abstract

This paper describes a probabilistic latent variable model that is designed to detect human values such as justice or freedom that a writer has sought to reflect or appeal to when participating in a public debate. The proposed model treats the words in a sentence as having been chosen based on specific values; values reflected by each sentence are then estimated by aggregating values associated with each word. The model can determine the human values for the word in light of the influence of the previous word. This design choice was motivated by syntactic structures such as noun+noun, adjective+noun, and verb+adjective. The classifier based on the model was evaluated on a test collection containing 102 manually annotated documents focusing on one contentious political issue — Net neutrality, achieving the highest reported classification effectiveness for this task. We also compared our proposed classifier with human second annotator. As a result, the proposed classifier effectiveness is statistically comparable with human annotators.
一种词尺度的概率潜变量模型用于人类价值观的检测
本文描述了一个概率潜变量模型,该模型旨在检测作家在参与公共辩论时试图反映或呼吁的人类价值观,如正义或自由。提出的模型将句子中的单词视为根据特定值选择的;然后通过汇总与每个单词相关的值来估计每个句子所反映的值。该模型可以根据前一个词的影响来确定该词的人类价值。这种设计选择是由名词+名词、形容词+名词、动词+形容词等句法结构所驱动的。基于该模型的分类器在包含102个人工注释文档的测试集上进行了评估,这些文档关注一个有争议的政治问题——网络中立性,在这项任务中获得了最高的分类效率。我们还将我们提出的分类器与人类第二注释器进行了比较。因此,所提出的分类器的有效性在统计上与人类注释器相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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