论文标题

揭示人类推理研究的数据相关限制:基于推荐系统的分析

Uncovering the Data-Related Limits of Human Reasoning Research: An Analysis based on Recommender Systems

论文作者

Riesterer, Nicolas, Brand, Daniel, Ragni, Marco

论文摘要

了解人类推理的基本原理对于任何旨在与人类紧密互动的系统的发展至关重要。认知科学实现了从理论驱动的角度对类似人类智力进行建模的目标,重点是解释性。作为人类推理研究的核心领域之一,三段论推理在过去几年中已经开发了大量的计算模型。但是,对模型预测性能的最新分析表明,改进的停滞。我们认为,认知科学中遇到的大多数问题不是由于已经开发的特定模型所致,而是可以追溯到行为数据的特殊性。 因此,我们通过比较对人为生成的数据集的模型性能来研究人类推理研究中问题的潜在原因。特别是,我们应用协作过滤建议者来研究数据中不一致和噪声的对抗性影响,并说明了在研究领域的数据驱动方法的潜力,这主要与获得对域的高级理论见解有关。 我们的工作(i)提供了有关推理数据中人类反应所期望的噪音水平的洞察力,(ii)揭示了即将达到的绩效上限的证据,即接近敦促敦促扩展建模任务,并(iii)引入工具并提出初步结果,以提高对人类的研究和建模为个人的良好范围,以促进人们对人类进行研究的良好态度,以预测人类的理由。

Understanding the fundamentals of human reasoning is central to the development of any system built to closely interact with humans. Cognitive science pursues the goal of modeling human-like intelligence from a theory-driven perspective with a strong focus on explainability. Syllogistic reasoning as one of the core domains of human reasoning research has seen a surge of computational models being developed over the last years. However, recent analyses of models' predictive performances revealed a stagnation in improvement. We believe that most of the problems encountered in cognitive science are not due to the specific models that have been developed but can be traced back to the peculiarities of behavioral data instead. Therefore, we investigate potential data-related reasons for the problems in human reasoning research by comparing model performances on human and artificially generated datasets. In particular, we apply collaborative filtering recommenders to investigate the adversarial effects of inconsistencies and noise in data and illustrate the potential for data-driven methods in a field of research predominantly concerned with gaining high-level theoretical insight into a domain. Our work (i) provides insight into the levels of noise to be expected from human responses in reasoning data, (ii) uncovers evidence for an upper-bound of performance that is close to being reached urging for an extension of the modeling task, and (iii) introduces the tools and presents initial results to pioneer a new paradigm for investigating and modeling reasoning focusing on predicting responses for individual human reasoners.

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