2023年度 人工知能学会全国大会(第37回)

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一般セッション » GS-10 AI応用

[3M5-GS-10] AI応用:行動ログ活用Ⅰ

2023年6月8日(木) 15:30 〜 17:10 M会場 (会議室 D1)

座長:西村 拓一(北陸先端科学技術大学院大学) [現地]

15:30 〜 15:50

[3M5-GS-10-01] An Assessment System of Online Structured Job Interviews Supported by Multi-Modal Deep Learning

〇Shengzhou Yi1, Toshiaki Yamasaki2, Toshihiko Yamasaki1 (1. The University of Tokyo, 2. Talent and Assessment Inc.)

キーワード:Multimodal Recognition, Multimodal Neural Network, Class Imbalance, Job Interview

A structured interview is a method that asks predetermined behavioral questions to interviewees to eliminate subjectivity of interviewers. This method is employed in survey research, job interviews, and so on. However, there are still some problems because interviews are usually time- and money-consuming. In this study, we present a multi-modal neural network aiming at online structured job interviews. Text and audio features of the interviews are extracted by the proposed model. Furthermore, class-imbalanced learning methods and margin ranking loss are used to improve the model performance. The interview videos are assigned with the labels of seven assessment criteria to clarify whether the candidates get high or low scores. For the experimental results, the combination of multi-modal features, class-imbalanced learning, and margin ranking loss makes the proposed model achieve an average accuracy of 76.59% in the two-class classification. Such AI-supported job interview systems would give more chances to candidates because they will have online interviews in addition to curriculum vitae screening.

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