Cognitive Anthropomorphism of AI: How Humans and Computers Classify Images

Shane T. Mueller
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引用次数: 2

Abstract

Modern artificial intelligence (AI) image classifiers have made impressive advances in recent years, but their performance often appears strange or violates expectations of users. This suggests that humans engage in cognitive anthropomorphism: expecting AI to have the same nature as human intelligence. This mismatch presents an obstacle to appropriate human-AI interaction. To delineate this mismatch, I examine known properties of human classification, in comparison with image classifier systems. Based on this examination, I offer three strategies for system design that can address the mismatch between human and AI classification: explainable AI, novel methods for training users, and new algorithms that match human cognition.
人工智能的认知拟人化:人类和计算机如何分类图像
现代人工智能(AI)图像分类器近年来取得了令人印象深刻的进步,但它们的表现往往显得奇怪或违背用户的期望。这表明人类参与了认知拟人化:期望人工智能具有与人类智能相同的性质。这种不匹配给适当的人机交互带来了障碍。为了描述这种不匹配,我研究了人类分类的已知属性,并与图像分类器系统进行了比较。基于这一研究,我提供了三种系统设计策略,可以解决人类和人工智能分类之间的不匹配:可解释的人工智能,训练用户的新方法,以及与人类认知相匹配的新算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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