MULTIPAR: Supervised Irregular Tensor Factorization with Multi-task
Learning
- URL: http://arxiv.org/abs/2208.00993v1
- Date: Mon, 1 Aug 2022 17:07:23 GMT
- Title: MULTIPAR: Supervised Irregular Tensor Factorization with Multi-task
Learning
- Authors: Yifei Ren, Jian Lou, Li Xiong, Joyce C Ho, Xiaoqian Jiang,
Sivasubramanium Bhavan
- Abstract summary: PARAFAC2 has been successfully applied on EHRs for extracting meaningful medical concepts (phenotypes)
We propose MULTIPAR: a supervised irregular tensor factorization with multi-task learning.
- Score: 19.67636717572317
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Tensor factorization has received increasing interest due to its intrinsic
ability to capture latent factors in multi-dimensional data with many
applications such as recommender systems and Electronic Health Records (EHR)
mining. PARAFAC2 and its variants have been proposed to address irregular
tensors where one of the tensor modes is not aligned, e.g., different users in
recommender systems or patients in EHRs may have different length of records.
PARAFAC2 has been successfully applied on EHRs for extracting meaningful
medical concepts (phenotypes). Despite recent advancements, current models'
predictability and interpretability are not satisfactory, which limits its
utility for downstream analysis. In this paper, we propose MULTIPAR: a
supervised irregular tensor factorization with multi-task learning. MULTIPAR is
flexible to incorporate both static (e.g. in-hospital mortality prediction) and
continuous or dynamic (e.g. the need for ventilation) tasks. By supervising the
tensor factorization with downstream prediction tasks and leveraging
information from multiple related predictive tasks, MULTIPAR can yield not only
more meaningful phenotypes but also better predictive performance for
downstream tasks. We conduct extensive experiments on two real-world temporal
EHR datasets to demonstrate that MULTIPAR is scalable and achieves better
tensor fit with more meaningful subgroups and stronger predictive performance
compared to existing state-of-the-art methods.
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