BP Neural Network-based Model for Evaluating User Interfaces of Human-computer Interaction System

Ruixin Chen, Na Lin, Jin Su, Yanjun Shi
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Abstract

Human-computer interaction system is the medium for human and computer. The rationality and intelligence of its design directly affect the work efficiency and execution ability of relevant practitioners. Traditional human-computer interaction evaluation usually adopts expert evaluation method. This method is difficult to evaluate objectively because of people’s subjective cognitive differences. Therefore, this paper proposes an intelligent evaluation method for complex human-computer interaction system based on BP neural network model. First, the known evaluation indicators are classified and organized, and five key evaluation indicators are optimized according to importance and relevance. Then the index is quantified into the evaluation function according to the fuzzy analytic hierarchy process. Finally, the data obtained by the simulation test is used as the training set and test set of the BP neural network, and then the evaluation model of the humancomputer interaction system is obtained.
基于BP神经网络的人机交互系统用户界面评价模型
人机交互系统是人机交互的媒介。其设计的合理性和智能性直接影响到相关从业人员的工作效率和执行能力。传统的人机交互评价通常采用专家评价方法。由于人们主观认知的差异,这种方法难以客观评价。为此,本文提出了一种基于BP神经网络模型的复杂人机交互系统智能评价方法。首先,对已知的评价指标进行分类和组织,并根据重要性和相关性对5个关键评价指标进行优化。然后根据模糊层次分析法将指标量化为评价函数。最后,将仿真测试得到的数据作为BP神经网络的训练集和测试集,得到人机交互系统的评价模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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