English

Exploring the Effectiveness and Consistency of Task Selection in Intermediate-Task Transfer Learning

Computation and Language 2024-07-24 v1

Abstract

Identifying beneficial tasks to transfer from is a critical step toward successful intermediate-task transfer learning. In this work, we experiment with 130 source-target task combinations and demonstrate that the transfer performance exhibits severe variance across different source tasks and training seeds, highlighting the crucial role of intermediate-task selection in a broader context. We compare four representative task selection methods in a unified setup, focusing on their effectiveness and consistency. Compared to embedding-free methods and text embeddings, task embeddings constructed from fine-tuned weights can better estimate task transferability by improving task prediction scores from 2.59% to 3.96%. Despite their strong performance, we observe that the task embeddings do not consistently demonstrate superiority for tasks requiring reasoning abilities. Furthermore, we introduce a novel method that measures pairwise token similarity using maximum inner product search, leading to the highest performance in task prediction. Our findings suggest that token-wise similarity is better predictive for predicting transferability compared to averaging weights.

Keywords

Cite

@article{arxiv.2407.16245,
  title  = {Exploring the Effectiveness and Consistency of Task Selection in Intermediate-Task Transfer Learning},
  author = {Pin-Jie Lin and Miaoran Zhang and Marius Mosbach and Dietrich Klakow},
  journal= {arXiv preprint arXiv:2407.16245},
  year   = {2024}
}

Comments

Accepted to ACL SRW 2024

R2 v1 2026-06-28T17:50:31.120Z