Discretization of Series of Communication Signals in Noisy Environment by Reinforcement Learning
نویسنده
چکیده
Thinking about the “Symbol Grounding Problem” and the brain structure of living things, the author believes that it is the best solution for generating communication in robot-like systems to use a neural network that is trained based on reinforcement learning. As the first step of the research of symbol emergence using neural network, it was examined that parallel analog communication signals are binarized in some degree by noise addition in reinforcement learning-based communication acquisition. In this paper, it is shown that two consecutive analog communication signals are binarized by noise addition using recurrent neural networks. Furthermore, when the noise ratio becomes larger, the degree of the binarization becomes larger.
منابع مشابه
Discretization of analog communication signals by noise addition in reinforcement learning of communication
Towards the unified processing of symbols and patterns by neural networks, it was examined that symbols emerge using neural networks that is trained only by reinforcement learning. A very simple communication-learning task was assumed, and some noise is added to the communication signals. After learning, as the noise level during learning became larger, the communication signals were binarized ...
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