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Binding and Cross-Modal Learning in Markov Logic Networks

机译:马尔可夫逻辑网络中的绑定和跨模态学习

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摘要

Binding - the ability to combine two or more modal representations of the same entity into a single shared representation is vital for every cognitive system operating in a complex environment. In order to successfully adapt to changes in an dynamic environment the binding mechanism has to be supplemented with cross-modal learning. In this paper we define the problems of high-level binding and cross-modal learning. By these definitions we model a binding mechanism and a cross-modal learner in a Markov logic network and test the system on a synthetic object database.
机译:绑定-将同一实体的两个或多个模态表示合并为单个共享表示的能力对于在复杂环境中运行的每个认知系统都至关重要。为了成功地适应动态环境中的变化,必须通过交叉模式学习来补充绑定机制。在本文中,我们定义了高级绑定和跨模式学习的问题。通过这些定义,我们在马尔可夫逻辑网络中对绑定机制和交叉模式学习器进行建模,并在合成对象数据库上测试系统。

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