Improving the performance of predicting users' subjective evaluation characteristics to reduce their fatigue in IEC.

Shangfei Wang, Hideyuki Takagi
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引用次数: 19

Abstract

Users' fatigue is the biggest technological hurdle facing Interactive Evolutionary Computation (IEC). This paper introduces the idea of "absolute scale" and "neighbour scale" to improve the performance of predicting users' subjective evaluation characteristics in IEC, and thus it will accelerate EC convergence and reduce users' fatigue. We experimentally evaluate the effect of the proposed method using two benchmark functions. The experimental results show that the convergence speed of IEC using the proposed predictor, which learns from absolute evaluation data, is much faster than the conventional one, which learns from relative data, especially in early generations. Also, IEC with predictors that use recent data are more effective than those which use all past data.

提高用户主观评价特征的预测性能,减少用户在IEC中的疲劳。
用户疲劳是交互进化计算(IEC)面临的最大技术障碍。本文引入了“绝对尺度”和“邻域尺度”的思想,提高了IEC对用户主观评价特征的预测性能,从而加速了EC的收敛,减少了用户的疲劳。我们用两个基准函数对所提方法的效果进行了实验评估。实验结果表明,该预测器从绝对评价数据中学习,比从相对数据中学习的传统预测器的收敛速度要快得多,特别是在早期。此外,使用最近数据的预测器的IEC比使用所有过去数据的预测器更有效。
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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