Deep Temporal Sets with Evidential Reinforced Attentions for Unique Behavioral Pattern Discovery
Abstract
Machine learning-driven human behavior analysis is gaining attention in behavioral/mental healthcare, due to its potential to identify behavioral patterns that cannot be recognized by traditional assessments. Real-life applications, such as digital behavioral biomarker identification, often require the discovery of complex spatiotemporal patterns in multimodal data, which is largely under-explored. To fill this gap, we propose a novel model that integrates uniquely designed Deep Temporal Sets (DTS) with Evidential Reinforced Attentions (ERA). DTS captures complex temporal relationships in the input and generates a set-based representation, while ERA captures the policy network’s uncertainty and conducts evidence-aware exploration to locate attentive regions in behavioral data. Using child-computer interaction data as a testing platform, we demonstrate the effectiveness of DTS-ERA in differentiating children with Autism Spectrum Disorder and typically developing children based on sequential multimodal visual and touch behaviors. Comparisons with baseline methods show that our model achieves superior performance and has the potential to provide objective, quantitative, and precise analysis of complex human behaviors.
Cite
Text
Wang et al. "Deep Temporal Sets with Evidential Reinforced Attentions for Unique Behavioral Pattern Discovery." International Conference on Machine Learning, 2023.Markdown
[Wang et al. "Deep Temporal Sets with Evidential Reinforced Attentions for Unique Behavioral Pattern Discovery." International Conference on Machine Learning, 2023.](https://mlanthology.org/icml/2023/wang2023icml-deep/)BibTeX
@inproceedings{wang2023icml-deep,
title = {{Deep Temporal Sets with Evidential Reinforced Attentions for Unique Behavioral Pattern Discovery}},
author = {Wang, Dingrong and Pandey, Deep Shankar and Neupane, Krishna Prasad and Yu, Zhiwei and Zheng, Ervine and Zheng, Zhi and Yu, Qi},
booktitle = {International Conference on Machine Learning},
year = {2023},
pages = {36205-36223},
volume = {202},
url = {https://mlanthology.org/icml/2023/wang2023icml-deep/}
}