LGAINov 30, 2022

Knowledge-augmented Deep Learning and Its Applications: A Survey

IBM
arXiv:2212.00017v148 citationsh-index: 24
Originality Synthesis-oriented
AI Analysis

It offers a comprehensive overview for researchers in AI/ML to understand and advance knowledge integration in deep learning, but it is incremental as a survey paper.

This survey tackles the problem of deep learning models being data-hungry, non-generalizable, and non-interpretable by reviewing knowledge-augmented deep learning (KADL), which integrates domain knowledge to improve data efficiency, generalization, and interpretability, and provides a broad taxonomy and systematic review of existing techniques.

Deep learning models, though having achieved great success in many different fields over the past years, are usually data hungry, fail to perform well on unseen samples, and lack of interpretability. Various prior knowledge often exists in the target domain and their use can alleviate the deficiencies with deep learning. To better mimic the behavior of human brains, different advanced methods have been proposed to identify domain knowledge and integrate it into deep models for data-efficient, generalizable, and interpretable deep learning, which we refer to as knowledge-augmented deep learning (KADL). In this survey, we define the concept of KADL, and introduce its three major tasks, i.e., knowledge identification, knowledge representation, and knowledge integration. Different from existing surveys that are focused on a specific type of knowledge, we provide a broad and complete taxonomy of domain knowledge and its representations. Based on our taxonomy, we provide a systematic review of existing techniques, different from existing works that survey integration approaches agnostic to taxonomy of knowledge. This survey subsumes existing works and offers a bird's-eye view of research in the general area of knowledge-augmented deep learning. The thorough and critical reviews of numerous papers help not only understand current progresses but also identify future directions for the research on knowledge-augmented deep learning.

Foundations

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