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Applications of the Sufficiency Principle in Acceleration of Neural Networks Trainig

机译:充分性原理在加速神经网络训练中的应用

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One of the problems in AI tasks solving by neurocomputing methods is a considerable training time. This problem especially appears when it is needed to reach high quality in forecast reliability or pattern recognition. Some formalised ways for increasing of networks' training speed without loosing of precision are proposed here. The offered approaches are based on the Sufficiency Principle, which is formal representation of the aim of a concrete task and conditions (limitations) of their solving [1]. This is development of the concept that includes the formal aims' description to the context of such AI tasks as classification, pattern recognition, estimation etc.
机译:通过神经计算方法解决AI任务中的问题之一是需要大量的训练时间。当在预测可靠性或模式识别中需要达到高质量时,尤其会出现此问题。本文提出了一些在不降低精度的前提下提高网络训练速度的形式化方法。所提供的方法基于充分性原则,该原则是具体任务的目标和解决方案的条件(限制)的正式表示[1]。这是概念的发展,包括对诸如分类,模式识别,估计等AI任务的上下文的正式目标的描述。

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