Slices of Attention in Asynchronous Video Job Interviews
L\'eo Hemamou, Ghazi Felhi, Jean-Claude Martin, Chlo\'e Clavel

TL;DR
This paper investigates influential non-verbal social signals in asynchronous video job interviews using deep learning with attention mechanisms, revealing that attention slices contain more relevant information for hirability than random segments.
Contribution
It introduces a methodology to automatically extract and analyze attention slices in deep learning models for interview analysis, enhancing understanding of influential social signals.
Findings
Attention slices contain significantly more information related to hirability.
Deep learning with attention mechanisms can identify relevant interview segments.
Analysis improves understanding of non-verbal cues in asynchronous interviews.
Abstract
The impact of non verbal behaviour in a hiring decision remains an open question. Investigating this question is important, as it could provide a better understanding on how to train candidates for job interviews and make recruiters be aware of influential non verbal behaviour. This research has recently been accelerated due to the development of tools for the automatic analysis of social signals, and the emergence of machine learning methods. However, these studies are still mainly based on hand engineered features, which imposes a limit to the discovery of influential social signals. On the other side, deep learning methods are a promising tool to discover complex patterns without the necessity of feature engineering. In this paper, we focus on studying influential non verbal social signals in asynchronous job video interviews that are discovered by deep learning methods. We use a…
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