Cost-forced and repeated selective information minimization and maximization for multi-layered neural networks

R. Kamimura
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Abstract

The present paper aims to propose a new information-theoretic method to minimize and maximize selective information repeatedly. In particular, we try to solve the incomplete information control problem, where information cannot be fully controlled due to the existence of many contradictory factors inside. For this problem, the cost in terms of the sum of absolute connection weights is introduced for neural networks to increase and decrease information against contradictory forces in learning, such as error minimization. Thus, this method is called a “cost-forced” approach to control information. The method is contrary to the conventional regularization approach, where the cost has been used passively or negatively. The present method tries to use the cost positively, meaning that the cost can be augmented if necessary. The method was applied to an artificial and symmetric data set. In the symmetric data set, we tried to show that the symmetric property of the data set could be obtained by appropriately controlling information. In the second data set, that of residents in a nursing home, obtained by the complicated procedures of natural language processing, the experimental results confirmed that the present method could control selective information to extract non-linear relations as well as linear ones in increasing interpretation and generalization performance.
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多层神经网络的代价强制和重复选择信息最小化和最大化
本文旨在提出一种新的信息论方法来重复最小化和最大化选择性信息。特别是我们试图解决信息不完全控制问题,即由于内部存在许多矛盾因素,信息无法得到完全控制。针对这一问题,引入了以绝对连接权和为代价的代价,用于神经网络在学习过程中增加和减少信息以对抗相互矛盾的力量,如误差最小化。因此,这种方法被称为控制信息的“成本强制”方法。该方法与传统的正则化方法相反,在正则化方法中,成本被被动或消极地使用。目前的方法试图积极地利用成本,这意味着成本可以在必要时增加。将该方法应用于一个人工对称数据集。在对称数据集中,我们试图证明通过适当控制信息可以获得数据集的对称性质。在第二个数据集,即通过复杂的自然语言处理程序获得的养老院居民数据集中,实验结果证实了本方法既可以控制选择性信息提取非线性关系,又可以提高线性关系的解释和泛化性能。
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