【24h】

Learning abstract perceptual notions: The example of space

机译:学习抽象的感知概念:空间的例子

获取原文
获取原文并翻译 | 示例

摘要

Humans are extremely swift learners. We are able to grasp highly abstract notions, whether they come from art perception or pure mathematics. Current machine learning techniques demonstrate astonishing results in extracting patterns in information. Yet the abstract notions we possess are more than just statistical patterns in the incoming information. Sensorimotor theory suggests that they represent functions, laws, describing how the information can be transformed, or, in other words, they represent the statistics of sensorimotor changes rather than sensory inputs themselves. The aim of our work is to suggest a way for machine learning and sensorimotor theory to benefit from each other so as to pave the way toward new horizons in learning. We show in this study that a highly abstract notion, that of space, can be seen as a collection of laws of transformations of sensory information and that these laws could in theory be learned by a naive agent. As an illustration we do a one-dimensional simulation in which an agent extracts spatial knowledge in the form of internalized (“sensible”) rigid displacements. The agent uses them to encode its own displacements in a way which is isometrically related to external space. Though the algorithm allowing acquisition of rigid displacements is designed ad hoc, we believe it can stimulate the development of unsupervised learning techniques leading to similar results.
机译:人类是极其迅速的学习者。我们能够掌握高度抽象的概念,无论它们来自于艺术感知还是纯数学。当前的机器学习技术在提取信息模式方面显示出惊人的结果。但是,我们拥有的抽象概念不仅仅是传入信息中的统计模式。感觉运动理论表明,它们代表功能,规律,描述了如何转换信息,或者换句话说,它们代表了感觉运动变化的统计数据,而不是感觉输入本身。我们工作的目的是为机器学习和感觉运动理论相互借鉴提供一条途径,为学习的新视野铺平道路。我们在这项研究中表明,可以将高度抽象的概念(空间的概念)看作是感官信息转换定律的集合,并且这些定律在理论上可以由幼稚的主体学习。作为说明,我们进行了一维模拟,其中代理以内部(“敏感”)刚性位移的形式提取空间知识。该主体使用它们以与外部空间等距相关的方式编码自己的位移。尽管允许临时获取刚性位移的算法是临时设计的,但我们认为它可以刺激无监督学习技术的发展,从而获得相似的结果。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号