The Adaptive Advantage of Symbolic Theft Over Sensorimotor Toil: Grounding Language in Perceptual Categories

A. Cangelosi, S. Harnad
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引用次数: 200

Abstract

Using neural nets to simulate learning and the genetic algorithm to simulate evolution in a toy world of mushrooms and mushroom-foragers, we place two ways of acquiring categories into direct competition with one another: In (1) "sensorimotor toil," new categories are acquired through real-time, feedback-corrected, trial and error experience in sorting them. In (2) "symbolic theft," new categories are acquired by hearsay from propositions - boolean combinations of symbols describing them. In competition, symbolic theft always beats sensorimotor toil. We hypothesize that this is the basis of the adaptive advantage of language. Entry-level categories must still be learned by toil, however, to avoid an infinite regress (the "symbol grounding problem"). Changes in the internal representations of categories must take place during the course of learning by toil. These changes can be analyzed in terms of the compression of within-category similarities and the expansion of between-category differences. These allow regions of similarity space to be separated, bounded and named, and then the names can be combined and recombined to describe new categories, grounded recursively in the old ones. Such compression/expansion effects, called "categorical perception" (CP), have previously been reported with categories acquired by sensorimotor toil; we show that they can also arise from symbolic theft alone. The picture of natural language and its origins that emerges from this analysis is that of a powerful hybrid symbolic/sensorimotor capacity, infinitely superior to its purely sensorimotor precursors, but still grounded in and dependent on them. It can spare us from untold time and effort learning things the hard way, through direct experience, but it remain anchored in and translatable into the language of experience.
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符号盗窃相对于感觉运动劳动的适应性优势:基于知觉范畴的语言
我们使用神经网络来模拟蘑菇和蘑菇觅食者的玩具世界中的学习和遗传算法来模拟进化,我们将两种获取类别的方式置于彼此直接竞争的状态:“感觉运动辛劳”,新的类别是通过实时的、反馈修正的、尝试和错误的经验来分类的。(2)“符号盗窃”,新类别是通过传闻从命题中获得的——描述它们的符号的布尔组合。在竞争中,象征性的盗窃总是胜过感觉运动的辛劳。我们假设这是语言适应性优势的基础。然而,入门级的分类仍然必须通过努力学习,以避免无限的回归(“符号接地问题”)。范畴的内部表征的变化必须在辛勤学习的过程中发生。这些变化可以从类内相似性的压缩和类间差异的扩大两个方面来分析。这允许对相似空间的区域进行分离、限定和命名,然后这些名称可以组合和重新组合以描述新类别,并以旧类别递归地为基础。这种压缩/扩张效应被称为“范畴知觉”(CP),以前曾报道过通过感觉运动辛劳获得的范畴;我们表明,它们也可能仅由象征性盗窃引起。从这一分析中浮现出的自然语言及其起源的图景是一种强大的符号/感觉运动的混合能力,它无限地优于纯粹的感觉运动的前身,但仍然植根于并依赖于它们。它可以节省我们无数的时间和精力,通过直接的经验来学习困难的方式,但它仍然锚定并翻译成经验的语言。
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