We explore the efficacy of multimodal behavioral cues for explainable prediction of personality and interview-specific traits. We utilize elementary head-motion units named kinemes, atomic facial movements termed action units and speech features to estimate these human-centered traits. Empirical results confirm that kinemes and action units enable discovery of multiple trait-specific behaviors while also enabling explainability in support of the predictions. For fusing cues, we explore decision and feature-level fusion, and an additive attention-based fusion strategy which quantifies the relative importance of the three modalities for trait prediction. Examining various long-short term memory (LSTM) architectures for classification and regression on the MIT Interview and First Impressions Candidate Screening (FICS) datasets, we note that: (1) Multimodal approaches outperform unimodal counterparts, achieving the highest PCC of 0.98 for Excited-Friendly traits in MIT and 0.57 for Extraversion in FICS; (2) Efficient trait predictions and plausible explanations are achieved with both unimodal and multimodal approaches, and (3) Following the thin-slice approach, effective trait prediction is achieved even from two-second behavioral snippets. Our implementation code is available at: https://github.com/deepsurbhi8/Explainable_Human_Traits_Prediction.
Download full-text PDF |
Source |
---|---|
http://journals.plos.org/plosone/article?id=10.1371/journal.pone.0313883 | PLOS |
PLoS One
January 2025
Faculty of Science and Technology, University of Canberra, Canberra, ACT, Australia.
We explore the efficacy of multimodal behavioral cues for explainable prediction of personality and interview-specific traits. We utilize elementary head-motion units named kinemes, atomic facial movements termed action units and speech features to estimate these human-centered traits. Empirical results confirm that kinemes and action units enable discovery of multiple trait-specific behaviors while also enabling explainability in support of the predictions.
View Article and Find Full Text PDFImplement Sci Commun
January 2025
Johns Hopkins Bloomberg School of Public Health, Baltimore, MD, USA.
Background: Archetypes are representations of a group of people with shared behaviors, attitudes, and characteristics. The design and use of archetypes have potential application to increase partnership and support when embedding and scaling interventions but methodological approaches have not been developed.
Objective: To describe the methodology of designing archetypes for use in a pragmatic trial of advance care planning in the primary care context, SHARING Choices ((NCT04819191).
PNAS Nexus
December 2024
Institute for Human-Centered AI, Stanford University, Palo Alto, CA 94305, USA.
Large language models (LLMs) are becoming more widely used to simulate human participants and so understanding their biases is important. We developed an experimental framework using Big Five personality surveys and uncovered a previously undetected social desirability bias in a wide range of LLMs. By systematically varying the number of questions LLMs were exposed to, we demonstrate their ability to infer when they are being evaluated.
View Article and Find Full Text PDFNurse Educ
December 2024
Author Affiliations: School of Nursing, University of Wisconsin-Milwaukee, Milwaukee, Wisconsin (Drs Holt, Talsma, Woehrle, and Eljarrah); Zilber School of Public Health, University of Wisconsin-Milwaukee, Milwaukee, Wisconsin (Ms Lloren); and College of Engineering and Applied Science, University of Wisconsin-Milwaukee, Milwaukee, Wisconsin (Dr Avdeev).
Background: Many nursing curricula lack human-centered design (HCD) learning opportunities, and minimal evidence exists about HCD educational outcomes.
Purpose: The study explored the effects of HCD experiential learning activities on graduate nursing students.
Methods: The quasi-experimental mixed-method design employed an explanatory approach.
Agric Syst
October 2024
Alliance of Bioversity and the International Center for Tropical Agriculture (CIAT), TARI - Selian, Dodoma Road, Arusha, Tanzania.
Context: Crop breeding in the Global South faces a 'phenotyping bottleneck' due to reliance on manual visual phenotyping, which is both error-prone and challenging to scale across multiple environments, inhibiting selection of germplasm adapted to farmer production environments. This limitation impedes rapid varietal turnover, crucial for maintaining high yields and food security under climate change. Low adoption of improved varieties results from a top-down system in which farmers have been more passive recipients than active participants in varietal development.
View Article and Find Full Text PDFEnter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!