SDAIASMar 1, 2025

Language Model Mapping in Multimodal Music Learning: A Grand Challenge Proposal

arXiv:2503.00427v12 citationsh-index: 24
Originality Synthesis-oriented
AI Analysis

This is an incremental proposal targeting researchers in multimodal AI and music learning, focusing on improving alignment efficiency in data-scarce domains.

The paper proposes a grand challenge called language model mapping (LMM) to address the data-hungry nature of current multimodal alignment methods, aiming to map the essence between language models of different domains like music for deeper cross-modal alignment and more sample-efficient learning.

We have seen remarkable success in representation learning and language models (LMs) using deep neural networks. Many studies aim to build the underlying connections among different modalities via the alignment and mappings at the token or embedding level, but so far, most methods are very data-hungry, limiting their performance in domains such as music where paired data are less abundant. We argue that the embedding alignment is only at the surface level of multimodal alignment. In this paper, we propose a grand challenge of \textit{language model mapping} (LMM), i.e., how to map the essence implied in the LM of one domain to the LM of another domain under the assumption that LMs of different modalities are tracking the same underlying phenomena. We first introduce a basic setup of LMM, highlighting the goal to unveil a deeper aspect of cross-modal alignment as well as to achieve more sample-efficiency learning. We then discuss why music is an ideal domain in which to conduct LMM research. After that, we connect LMM in music with a more general and challenging scientific problem of \textit{learning to take actions based on both sensory input and abstract symbols}, and in the end, present an advanced version of the challenge problem setup.

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