首页> 外文会议>Computational Intelligence and Games, 2008. CIG '08 >Survival by continuous learning in a dynamic multiple task environment
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Survival by continuous learning in a dynamic multiple task environment

机译:通过在动态多任务环境中持续学习来生存

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The ability to adapt or not when challenged with a dynamic, changing environment is what differentiates between survival and extinction of species. In this paper we present a machine learning method that allows agents in an environment with changing tasks to adapt and modify their behavior thus ensuring their survival. These agents do not get explicit information about the change in tasks. The learning mechanism ensures the presence of enough diversity in the agents so that they can restart learning if the previous learning stops to be effective and enough continuity in the system so that the agents can keep on learning if their task has not changed.
机译:在充满活力的情况下挑战时,适应或不适应的能力是物种的生存与灭绝之间的区别。在本文中,我们介绍了一种机器学习方法,允许在环境中具有改变的任务来调整和修改其行为的机器学习方法,从而确保其生存。这些代理没有明确有关任务变更的明确信息。学习机制确保了在代理中存在足够的多样性,以便如果先前的学习停止在系统中的有效且足够的连续性,则可以重新开始学习,以便如果他们的任务没有改变,则代理可以继续学习。

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