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Learning Not to Generalize: Modular Adaptation of Visuomotor Gain

机译:学习不一概而论:视觉运动增益的模块化适应

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摘要

When a new sensorimotor mapping is learned through practice, learning commonly transfers to unpracticed regions of task space, that is, generalization ensues. Does generalization reflect fixed properties of movement representations in the nervous system and thereby limit what visuomotor mappings can and cannot be learned? Or does what needs to be learned determine the shape of generalization? We used the broad generalization properties of visuomotor gain adaptation to address these questions. Adaptation to a single gain for reaching movements is known to generalize broadly across movement directions. By training subjects on two different gains in two directions, we set up a potential conflict between generalization patterns: if generalization of gain adaptation indicates fixed properties of movement amplitude encoding, then learning two different gains in different directions should not be possible. Conversely, if generalization is flexible, then it should be possible to learn two gains. We found that subjects were able to learn two gains simultaneously, although more slowly than when they adapted to a single gain. Analysis of the resulting double-gain generalization patterns, however, unexpectedly revealed that generalization around each training direction did not arise de novo, but could be explained by a weighted combination of single-gain generalization patterns, in which the weighting takes into account the relative angular separation between training directions. Our findings therefore demonstrate that the mappings to each training target can be fully learned through reweighting of single-gain generalization patterns and not through a categorical alteration of these functions. These results are consistent with a modular decomposition approach to visuomotor adaptation, in which a complex mapping results from a combination of simpler mappings in a “mixture-of-experts” architecture.
机译:通过练习学习新的感觉运动映射时,学习通常会转移到任务空间的未练习区域,即,随之而来。泛化是否反映了神经系统中运动表示的固定属性,从而限制了可以和不能学习的视觉运动映射?还是需要学习什么才能确定概括的形式?我们使用了视觉运动增益适应的广泛概括特性来解决这些问题。已知适应单个增益以达到运动可广泛地概括整个运动方向。通过在两个方向上对两个不同的增益进行训练,我们建立了广义模式之间的潜在冲突:如果增益自适应的广义表示运动幅度编码的固定属性,那么在不同方向上学习两个不同的增益应该是不可能的。相反,如果泛化是灵活的,那么应该有可能学到两个收获。我们发现受试者能够同时学习两个增益,尽管比适应单个增益要慢。然而,对所得的双增益泛化模式的分析出乎意料地表明,并不是从头开始围绕每个训练方向进行泛化,而是可以通过单增益泛化模式的加权组合来解释,其中权重考虑了相对训练方向之间的角度间隔。因此,我们的发现表明,通过重新分配单增益泛化模式而不是通过对这些功能进行分类更改,可以完全了解到每个训练目标的映射。这些结果与用于视觉运动适应的模块化分解方法是一致的,在该方法中,复杂映射是由“专家混合物”体系结构中较简单映射的组合产生的。

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