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首页> 外文期刊>Synthese: An International Journal for Epistemology, Methodology and Philosophy of Science >Empiricism without magic: transformational abstraction in deep convolutional neural networks
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Empiricism without magic: transformational abstraction in deep convolutional neural networks

机译:无魔术的经验主义:深度卷积神经网络中的转型抽象

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In artificial intelligence, recent research has demonstrated the remarkable potential of Deep Convolutional Neural Networks (DCNNs), which seem to exceed state-of-the-art performance in new domains weekly, especially on the sorts of very difficult perceptual discrimination tasks that skeptics thought would remain beyond the reach of artificial intelligence. However, it has proven difficult to explain why DCNNs perform so well. In philosophy of mind, empiricists have long suggested that complex cognition is based on information derived from sensory experience, often appealing to a faculty of abstraction. Rationalists have frequently complained, however, that empiricists never adequately explained how this faculty of abstraction actually works. In this paper, I tie these two questions together, to the mutual benefit of both disciplines. I argue that the architectural features that distinguish DCNNs from earlier neural networks allow them to implement a form of hierarchical processing that I call “transformational abstraction”. Transformational abstraction iteratively converts sensory-based representations of category exemplars into new formats that are increasingly tolerant to “nuisance variation” in input. Reflecting upon the way that DCNNs leverage a combination of linear and non-linear processing to efficiently accomplish this feat allows us to understand how the brain is capable of bi-directional travel between exemplars and abstractions, addressing longstanding problems in empiricist philosophy of mind. I end by considering the prospects for future research on DCNNs, arguing that rather than simply implementing 80s connectionism with more brute-force computation, transformational abstraction counts as a qualitatively distinct form of processing ripe with philosophical and psychological significance, because it is significantly better suited to depict the generic mechanism responsible for this important kind of psychological processing in the brain.
机译:在人工智能中,最近的研究表明,深度卷积神经网络(DCNNS)的显着潜力,似乎每周在新域中的最先进的表现,特别是对怀疑人士思想的非常困难的感知歧视任务将仍然超出人工智能的范围。但是,它已经证明难以解释为什么DCNNS表现得很好。在思想哲学中,经验主义者已经长期建议,复杂的认知是基于来自感官经验的信息,经常吸引抽象的能力。然而,理性主义者经常抱怨,经验主义者从未充分解释了这位抽象的实际工作原理。在本文中,我将这两个问题与两个学科的互利相互界。我认为区分DCNN从早期的神经网络区分DCNN的架构特征允许它们实现我称之为“变革抽象”的层次处理形式。变革性抽象迭代地将类别的基于Sensory的表示转换为在输入中越来越耐受“滋扰变化”的新格式。反映DCNN利用线性和非线性处理的组合以有效地实现这一壮举,使我们能够了解大脑如何在样本和抽象之间进行双向行程,解决实证主义哲学中的长期存在的问题。我通过考虑未来对DCNN的研究的前景来结束,而不是简单地利用更多的暴力计算,而不是简单地实施80年代的联系,转型抽象计数作为具有哲学和心理意义的定性不同的处理成熟的形式,因为它显着更适合描绘对大脑中这种重要的心理处理负责的通用机制。

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