跨域和域内突触维持对视觉区域自主发展的影响

Q. Guo, Xiaofeng Wu, J. Weng
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引用次数: 14

摘要

Where-What Networks (WWNs)是一系列用于识别和关注复杂视觉场景的发展网络。自主发展最关键的挑战之一是任务非特异性,即网络学习各种开放式的任务技能,没有预先定义的任务。那么,一个类似大脑的网络是如何发展出可以使用隐式符号规则进行概括的对象关系技能的呢?在我们的WWN-9中提出了一种统一突触维持的初步方案,该方案在神经元的感觉和运动域中起作用。在新的工作中,我们证明了跨域和域内的突触维持比使用统一的突触维持方案获得了更好的泛化。这种泛化使WWN能够自动发现类似符号但隐含的规则-从从未观察到的对象位置的新组合中检测对象组。所谓“类符号但隐含规则”,是指开发程序没有符号和明确的规则,但类符号概念(位置、类型)和隐含规则(两个特定类型对象必须同时出现——组)作为运动区域的放电模式出现,并被控制者使用。此外,突触维持过程与细胞连接的发生(和适应)相对应,我们的模型自主地将Y区发育为两个子区,分别负责模式识别和符号推理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cross-domain and within-domain synaptic maintenance for autonomous development of visual areas
Where-What Networks (WWNs) is a series of developmental networks for the recognition and attention of complex visual scenes. One of the most critical challenges of autonomous development is task non-specificity, namely, the network is meant to learn a variety of open-ended task skills without pre-defined tasks. Then how does a brain-like network develop skills for object relation that can generalize using implicit symbol-like rules? A preliminary scheme of uniform synaptic maintenance, which works across a neuron's sensory and motor domains, has been proposed in our WWN-9. In the new work here, we show that cross-domain and within-domain synaptic maintenance gains superior generalization than using the uniform synaptic maintenance scheme. This generalization enables the WWN to automatically discover symbol-like but implicit rules - detecting object groups from new combinations of object locations that were never observed. By “symbol-like but implicit rules”, we mean that the development program has no symbols and explicit rules, but symbol-like concepts (location, type) and implicit rule (two specific type objects must present concurrently - group) emerge as the firing patterns of the motor area and are used by the control. Moreover, the process of synaptic maintenance corresponds to the genesis (and adaptation) of cell connections and our model autonomously develops the Y area into two subarea, early area and later area, in charge of pattern recognition and symbolic reasoning respectively.
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