表示和预测日常行为

M. Singh, Russell Richie, Sudeep Bhatia
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引用次数: 3

摘要

对人类日常行为的预测是行为科学的中心目标。然而,这方面的努力是有限的,因为(1)大多数调查和实验中研究的行为只代表了所有可能行为的一小部分,(2)由于难以充分代表这些行为,很难从现有研究中概括数据来预测任意行为。我们的论文试图解决这些问题。首先,通过抽取自然语言中的频繁动词短语,并通过人类编码对其进行提炼,我们编译了一个包含近4000种人类常见行为的数据集。其次,我们使用分布式语义模型来获得我们行为的向量表示,并将其与人口统计和心理数据相结合,为美国人口的代表性样本建立有监督的深度神经网络模型。我们的最佳模型在预测新(样本外)参与者的倾向以及新行为时达到了合理的准确率,并为模拟行为中的心理和人口差异提供了新的见解。这项工作是建立日常行为预测理论的第一步,从而提高了行为科学研究的普遍性和自然主义。
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Representing and Predicting Everyday Behavior
The prediction of everyday human behavior is a central goal in the behavioral sciences. However, efforts in this direction have been limited, as (1) the behaviors studied in most surveys and experiments represent only a small fraction of all possible behaviors, and (2) it has been difficult to generalize data from existing studies to predict arbitrary behaviors, owing to the difficulty in adequately representing such behaviors. Our paper attempts to address each of these problems. First, by sampling frequent verb phrases in natural language and refining these through human coding, we compile a dataset of nearly 4000 common human behaviors. Second, we use distributed semantic models to obtain vector representations for our behaviors, and combine these with demographic and psychographic data, to build supervised, deep neural network models of behavioral propensities for a representative sample of the US population. Our best models achieve reasonable accuracy rates when predicting propensities for novel (out-of-sample) participants as well as novel behaviors, and offer new insights for modeling psychographic and demographic differences in behavior. This work is a first step towards building predictive theories of everyday behavior, and thus improving the generality and naturalism of research in the behavioral sciences.
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4.30
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