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Selective attention improves self-organization of cortical maps with multiple inputs

机译:选择性注意可改善具有多个输入的皮层图的自组织性

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Models of self-organizing cortical maps have focused on demonstrations with single objects in the environment. Recently, the validity of a traditional biological model has been questioned for the case of multiple simultaneous input sources. Here we show that the standard model is able to self-organize with multiple inputs. However, we also show that the ability to self-organization can be enhanced considerably by including top-down attention as well as some noise. The model is also used to simulate the development of tuning curves.
机译:自组织皮质图的模型集中于环境中单个对象的演示。最近,对于多个同时输入源的情况,传统生物学模型的有效性受到了质疑。在这里,我们表明标准模型能够通过多个输入进行自组织。但是,我们还表明,通过包括自上而下的注意以及一些杂音,可以大大增强自组织的能力。该模型还用于模拟调整曲线的发展。

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