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Main Authors: Schrader, Timo Pierre, Lange, Lukas, Razniewski, Simon, Friedrich, Annemarie
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.10449
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author Schrader, Timo Pierre
Lange, Lukas
Razniewski, Simon
Friedrich, Annemarie
author_facet Schrader, Timo Pierre
Lange, Lukas
Razniewski, Simon
Friedrich, Annemarie
contents Reasoning is key to many decision making processes. It requires consolidating a set of rule-like premises that are often associated with degrees of uncertainty and observations to draw conclusions. In this work, we address both the case where premises are specified as numeric probabilistic rules and situations in which humans state their estimates using words expressing degrees of certainty. Existing probabilistic reasoning datasets simplify the task, e.g., by requiring the model to only rank textual alternatives, by including only binary random variables, or by making use of a limited set of templates that result in less varied text. In this work, we present QUITE, a question answering dataset of real-world Bayesian reasoning scenarios with categorical random variables and complex relationships. QUITE provides high-quality natural language verbalizations of premises together with evidence statements and expects the answer to a question in the form of an estimated probability. We conduct an extensive set of experiments, finding that logic-based models outperform out-of-the-box large language models on all reasoning types (causal, evidential, and explaining-away). Our results provide evidence that neuro-symbolic models are a promising direction for improving complex reasoning. We release QUITE and code for training and experiments on Github.
format Preprint
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publishDate 2024
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spellingShingle QUITE: Quantifying Uncertainty in Natural Language Text in Bayesian Reasoning Scenarios
Schrader, Timo Pierre
Lange, Lukas
Razniewski, Simon
Friedrich, Annemarie
Computation and Language
Reasoning is key to many decision making processes. It requires consolidating a set of rule-like premises that are often associated with degrees of uncertainty and observations to draw conclusions. In this work, we address both the case where premises are specified as numeric probabilistic rules and situations in which humans state their estimates using words expressing degrees of certainty. Existing probabilistic reasoning datasets simplify the task, e.g., by requiring the model to only rank textual alternatives, by including only binary random variables, or by making use of a limited set of templates that result in less varied text. In this work, we present QUITE, a question answering dataset of real-world Bayesian reasoning scenarios with categorical random variables and complex relationships. QUITE provides high-quality natural language verbalizations of premises together with evidence statements and expects the answer to a question in the form of an estimated probability. We conduct an extensive set of experiments, finding that logic-based models outperform out-of-the-box large language models on all reasoning types (causal, evidential, and explaining-away). Our results provide evidence that neuro-symbolic models are a promising direction for improving complex reasoning. We release QUITE and code for training and experiments on Github.
title QUITE: Quantifying Uncertainty in Natural Language Text in Bayesian Reasoning Scenarios
topic Computation and Language
url https://arxiv.org/abs/2410.10449