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A Modified Backpropagation Learning Algorithm With Added Emotional Coefficients

机译:带有情感系数的改进的反向传播学习算法

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摘要

Much of the research work into artificial intelligence (AI) has been focusing on exploring various potential applications of intelligent systems with successful results in most cases. In our attempts to model human intelligence by mimicking the brain structure and function, we overlook an important aspect in human learning and decision making: the emotional factor. While it currently sounds impossible to have ldquomachines with emotions,rdquo it is quite conceivable to artificially simulate some emotions in machine learning. This paper presents a modified backpropagation (BP) learning algorithm, namely, the emotional backpropagation (EmBP) learning algorithm. The new algorithm has additional emotional weights that are updated using two additional emotional parameters: anxiety and confidence. The proposed ldquoemotionalrdquo neural network will be implemented to a facial recognition problem, and the results will be compared to a similar application using a conventional neural network. Experimental results show that the addition of the two novel emotional parameters improves the performance of the neural network yielding higher recognition rates and faster recognition time.
机译:人工智能(AI)的许多研究工作一直专注于探索智能系统的各种潜在应用,并在大多数情况下取得成功。在通过模仿大脑结构和功能来模拟人类智力的尝试中,我们忽略了人类学习和决策中的一个重要方面:情感因素。虽然目前听起来不可能让“机器”带有情感,但可以想象在机器学习中人为地模拟某些情感。本文提出了一种改进的反向传播(BP)学习算法,即情感反向传播(EmBP)学习算法。新算法具有附加的情感权重,可以使用两个附加的情感参数来更新这些权重:焦虑和自信心。拟议的“神经网络”神经网络将实现到面部识别问题,并将结果与​​使用常规神经网络的类似应用程序进行比较。实验结果表明,两个新的情感参数相加可以改善神经网络的性能,从而获得更高的识别率和更快的识别时间。

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