LGAINov 19, 2022

A survey on knowledge-enhanced multimodal learning

arXiv:2211.12328v331 citationsh-index: 29
Originality Synthesis-oriented
AI Analysis

This work provides a unified taxonomy and analysis for researchers in multimodal learning, but it is incremental as it surveys existing methods rather than introducing new ones.

The survey addresses the limitations of visiolinguistic models in understanding commonsense and factual knowledge by proposing the integration of knowledge graphs to enhance their capabilities, resulting in improved explainability, fairness, and validity in decision-making.

Multimodal learning has been a field of increasing interest, aiming to combine various modalities in a single joint representation. Especially in the area of visiolinguistic (VL) learning multiple models and techniques have been developed, targeting a variety of tasks that involve images and text. VL models have reached unprecedented performances by extending the idea of Transformers, so that both modalities can learn from each other. Massive pre-training procedures enable VL models to acquire a certain level of real-world understanding, although many gaps can be identified: the limited comprehension of commonsense, factual, temporal and other everyday knowledge aspects questions the extendability of VL tasks. Knowledge graphs and other knowledge sources can fill those gaps by explicitly providing missing information, unlocking novel capabilities of VL models. In the same time, knowledge graphs enhance explainability, fairness and validity of decision making, issues of outermost importance for such complex implementations. The current survey aims to unify the fields of VL representation learning and knowledge graphs, and provides a taxonomy and analysis of knowledge-enhanced VL models.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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