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Sleep learning - An incremental learning system inspired by sleep behavior

机译:睡眠学习 - 一种由睡眠行为启发的增量学习系统

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Sleep is very important to our lives. For example, we cannot learn/memorize new experiences well without sleep. This suggests that the sleep is very important for our learning and memory. Although sleep is seemingly biological system-specific constraint, a sleep-like period is often needed for artificial learning systems. This paper describes the cases in which a sleep-like period, when the system stops learning new instances, is needed for refining the internal representation of knowledge in incremental/online learning tasks. Through several benchmark tests, we show that the incremental learning system with sleep (ILS) proposed by the authors generates a more compact data model than those of other incremental learning systems, that do not always need a sleep-like period.
机译:睡眠对我们的生活非常重要。例如,我们无法在没有睡眠的情况下学习/记住新的体验。这表明睡眠对我们的学习和记忆非常重要。虽然睡眠是似乎生物系统特定的约束,但人工学习系统通常需要睡眠时期。本文介绍了一种睡眠状时期,当系统停止学习新实例时,需要在增量/在线学习任务中炼制知识内部表示所需要的情况下。通过几个基准测试,我们表明,作者提出的睡眠(ILS)的增量学习系统会产生比其他增量学习系统更紧凑的数据模型,这些系统并不总是需要睡眠时期。

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