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Learning through overcoming incompatible and anti-subsumption inconsistencies

机译:通过克服不兼容和反增综合的不一致学习

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It is a grand challenge to build intelligent agent systems that can improve their problem-solving performance through perpetual learning. In our previous work, we have proposed a special type of perpetual learning paradigm called inconsistency-induced learning, or i2Learning, along with several inconsistency-specific learning algorithms. i2Learning is a step toward meeting the challenge. The work reported in this paper is a continuation of the ongoing research with i2Learning. We describe two more learning algorithms for incompatible inconsistency and anti-subsumption inconsistency in the context of i2Learning. The results will be incorporated into empirical studies as part of future work.
机译:建立智能代理系统是一种宏伟的挑战,可以通过永久学习来提高他们解决问题的性能。 在我们以前的工作中,我们提出了一种特殊类型的永久学习范式,称为不一致诱导的学习,或者我 2 学习,以及几个不一致的特定于特定的学习算法。 我 2 学习是努力迎接挑战的一步。 本文报告的工作是持续研究I 2 学习。 我们在I 2 学习的背景下描述了两个有关不兼容的不一致和反增载不一致的学习算法。 结果将作为未来工作的一部分纳入实证研究。

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