Paper ID: 2311.08637 • Published Nov 15, 2023
Formal Proofs as Structured Explanations: Proposing Several Tasks on Explainable Natural Language Inference
Lasha Abzianidze
TL;DR
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In this position paper, we propose a reasoning framework that can model the
reasoning process underlying natural language inferences. The framework is
based on the semantic tableau method, a well-studied proof system in formal
logic. Like the semantic tableau, the framework is driven by refutation --
something is proved if and only if its counterexample was not refuted. Despite
being rooted in formal logic, the framework shares similarities with the mental
models, a theory on the psychology of reasoning. We will show how the reasoning
framework can facilitate the collection of comprehensive and structured
explanations for existing naturalistic inference problems. To make the
suggestion more concrete, we propose a method of semi-automatically obtaining
structured explanations from the formal proofs of a reliable and
high-performing logic-based inference system. Taking advantage of the in-depth
information available in the generated formal proofs, we show how it can be
used to define natural language reasoning tasks with structured explanations.
The proposed tasks can be ordered according to difficulty defined in terms of
the granularity of explanations. We argue that the tasks that contain a natural
sketch of the proofs will suffer from substantially fewer shortcomings than the
existing explainable reasoning tasks (or datasets).