人类信念的潜在维度建模

Huy Vu, Salvatore Giorgi, Jeremy D. W. Clifton, Niranjan Balasubramanian, H. A. Schwartz
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引用次数: 1

摘要

我们如何看待周围的世界会影响我们的生活方式和对它的反应。在本研究中,我们提出了LaBel (Latent Beliefs Model),这是主题建模的一种替代方案,它可以从基于转换器的嵌入中发现潜在的语义维度,并将其表示为生成的短语而不是单词列表。我们使用LaBel来探索人类对世界和其他流行领域(如教育或育儿)的主要信念。虽然人类信仰在以前的工作中已经被探索过,但我们提出的模型有助于自动化探索过程,减少对人类专家的依赖,节省时间和人工努力,特别是在处理大型语料库数据时。我们的LaBel方法使用一种自回归转换器的新修改来有效地在矢量输入格式上生成文本条件。与主题建模方法不同,我们生成的文本(例如“世界真的对你有利”)是话语片段而不是单词列表,这有助于以更自然的方式在完整的上下文中传达语义。我们使用入侵任务和识别推文中主要信念类别的分类任务来评估LaBel维度,发现比流行的主题建模方法更准确。
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Modeling Latent Dimensions of Human Beliefs
How we perceive our surrounding world impacts how we live in and react to it. In this study, we propose LaBel (Latent Beliefs Model), an alternative to topic modeling that uncovers latent semantic dimensions from transformer-based embeddings and enables their representation as generated phrases rather than word lists. We use LaBel to explore the major beliefs that humans have about the world and other prevalent domains, such as education or parenting. Although human beliefs have been explored in previous works, our proposed model helps automate the exploring process to rely less on human experts, saving time and manual efforts, especially when working with large corpus data. Our approach to LaBel uses a novel modification of autoregressive transformers to effectively generate texts conditioning on a vector input format. Differently from topic modeling methods, our generated texts (e.g. “the world is truly in your favor”) are discourse segments rather than word lists, which helps convey semantics in a more natural manner with full context. We evaluate LaBel dimensions using both an intrusion task as well as a classification task of identifying categories of major beliefs in tweets finding greater accuracies than popular topic modeling approaches.
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