Actively Learning a Bayesian Matrix Fusion Model with Deep Side Information
Abstract
High-dimensional deep neural network representations of images and concepts can be aligned to predict human annotations of diverse stimuli. However, such alignment requires the costly collection of behavioral responses, such that, in practice, the deep-feature spaces are only ever sparsely sampled. Here, we propose an active learning approach to adaptively sample experimental stimuli to efficiently learn a Bayesian matrix factorization model with deep side information. We observe a significant efficiency gain over a passive baseline. Furthermore, with a sequential batched sampling strategy, the algorithm is applicable not only to small datasets collected from traditional laboratory experiments but also to settings where large-scale crowdsourced data collection is needed to accurately align the high-dimensional deep feature representations derived from pre-trained networks. This provides cost-effective solutions for collecting and generating quality-assured predictions in large-scale behavioral and cognitive studies.
Cite
Text
Yu and Suchow. "Actively Learning a Bayesian Matrix Fusion Model with Deep Side Information." NeurIPS 2023 Workshops: ReALML, 2023.Markdown
[Yu and Suchow. "Actively Learning a Bayesian Matrix Fusion Model with Deep Side Information." NeurIPS 2023 Workshops: ReALML, 2023.](https://mlanthology.org/neuripsw/2023/yu2023neuripsw-actively/)BibTeX
@inproceedings{yu2023neuripsw-actively,
title = {{Actively Learning a Bayesian Matrix Fusion Model with Deep Side Information}},
author = {Yu, Yangyang and Suchow, Jordan W.},
booktitle = {NeurIPS 2023 Workshops: ReALML},
year = {2023},
url = {https://mlanthology.org/neuripsw/2023/yu2023neuripsw-actively/}
}