Target Languages (vs. Inductive Biases) for Learning to Act and Plan
Hector Geffner

TL;DR
This paper proposes a novel approach where representations for learning to act and plan are learned over a known target language with semantics, emphasizing the importance of language design over neural biases for better generalization.
Contribution
It introduces a framework that shifts focus from neural inductive biases to learning representations over structured target languages with known semantics.
Findings
Representation learning over target languages enhances generalization.
Combining neural methods with language-based representations is promising.
Formulates learning as a combinatorial problem adaptable to deep learning.
Abstract
Recent breakthroughs in AI have shown the remarkable power of deep learning and deep reinforcement learning. These developments, however, have been tied to specific tasks, and progress in out-of-distribution generalization has been limited. While it is assumed that these limitations can be overcome by incorporating suitable inductive biases, the notion of inductive biases itself is often left vague and does not provide meaningful guidance. In the paper, I articulate a different learning approach where representations do not emerge from biases in a neural architecture but are learned over a given target language with a known semantics. The basic ideas are implicit in mainstream AI where representations have been encoded in languages ranging from fragments of first-order logic to probabilistic structural causal models. The challenge is to learn from data the representations that have…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Logic, Reasoning, and Knowledge · Bayesian Modeling and Causal Inference
