We report a bio-inspired framework for training a neural network through reinforcement learning to induce high level functions within the network. Based on the interpretation that animals have gained their cognitive functions such as object recognition - without ever being specifically trained for - as a result of maximizing their fitness to the environment, we place our agent in an environment where developing certain functions may facilitate decision making. The experimental results show that high level functions, such as image classification and hidden variable estimation, can be naturally and simultaneously induced without any pre-training or specifying them.
翻译:我们报告了一个通过强化学习培训神经网络的生物激励框架,以诱导网络内的高级功能。根据动物由于最大限度地使其适应环境而获得了其认知功能,如物体识别(从未受过专门培训)这样的解释,我们把我们的代理人安置在一种环境里,发展某些功能可能促进决策。实验结果表明,高层次功能,如图像分类和隐藏变量估计,可以自然和同时引导,而不经过任何预先培训或具体规定。