LGAIJan 29, 2023

Emerging Synergies in Causality and Deep Generative Models: A Survey

arXiv:2301.12351v417 citationsh-index: 44
Originality Synthesis-oriented
AI Analysis

It addresses the problem of improving AI model interpretability and generalization for researchers and practitioners, but is incremental as it synthesizes existing work.

This survey explores the integration of causality and deep generative models to address limitations in generalization and interpretability, highlighting methodologies, challenges, and future directions in this emerging field.

In the field of artificial intelligence (AI), the quest to understand and model data-generating processes (DGPs) is of paramount importance. Deep generative models (DGMs) have proven adept in capturing complex data distributions but often fall short in generalization and interpretability. On the other hand, causality offers a structured lens to comprehend the mechanisms driving data generation and highlights the causal-effect dynamics inherent in these processes. While causality excels in interpretability and the ability to extrapolate, it grapples with intricacies of high-dimensional spaces. Recognizing the synergistic potential, we delve into the confluence of causality and DGMs. We elucidate the integration of causal principles within DGMs, investigate causal identification using DGMs, and navigate an emerging research frontier of causality in large-scale generative models, particularly generative large language models (LLMs). We offer insights into methodologies, highlight open challenges, and suggest future directions, positioning our comprehensive review as an essential guide in this swiftly emerging and evolving area.

Foundations

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