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Parameter-Efficient Multi-Task and Multi-Domain Learning Using Factorized Tensor Networks
Author(s) -
Yash Garg,
Nebiyou Yismaw,
Rakib Hyder,
Ashley Prater- Bennette,
Amit Roy-Chowdhury,
M. Salman Asif
Publication year - 2025
Publication title -
ieee open journal of signal processing
Language(s) - English
Resource type - Magazines
eISSN - 2644-1322
DOI - 10.1109/ojsp.2025.3613142
Subject(s) - signal processing and analysis
Multi-task and multi-domain learning methods seek to learn multiple tasks/domains, jointly or one after another, using a single unified network. The primary challenge and opportunity lie in leveraging shared information across these tasks and domains to enhance the efficiency of the unified network. The efficiency can be in terms of accuracy, storage cost, computation, or sample complexity. In this paper, we introduce a factorized tensor network (FTN) designed to achieve accuracy comparable to that of independent single-task or single-domain networks, while introducing a minimal number of additional parameters. The FTN approach entails incorporating task- or domain-specific low-rank tensor factors into a shared frozen network derived from a source model. This strategy allows for adaptation to numerous target domains and tasks without encountering catastrophic forgetting. Furthermore, FTN requires a significantly smaller number of task-specific parameters compared to existing methods. We performed experiments on widely used multi-domain and multi-task datasets. We show the experiments on convolutional-based architecture with different backbones and on transformer-based architecture. Our findings indicate that FTN attains similar accuracy as single-task or single-domain methods while using only a fraction of additional parameters per task.

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