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Interactive evolutionary computation with minimum fitness evaluation requirement and offline algorithm design

机译:具有最低适用性评估要求的交互式进化计算和离线算法设计

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摘要

In interactive evolutionary computation (IEC), each solution is evaluated by a human user. Usually the total number of examined solutions is very small. In some applications such as hearing aid design and music composition, only a single solution can be evaluated at a time by a human user. Moreover, accurate and precise numerical evaluation is difficult. Based on these considerations, we formulated an IEC model with the minimum requirement for fitness evaluation ability of human users under the following assumptions: They can evaluate only a single solution at a time, they can memorize only a single previous solution they have just evaluated, their evaluation result on the current solution is whether it is better than the previous one or not, and the best solution among the evaluated ones should be identified after a pre-specified number of evaluations. In this paper, we first explain our IEC model in detail. Next we propose a (μ + 1)ES-style algorithm for our IEC model. Then we propose an offline meta-level approach to automated algorithm design for our IEC model. The main feature of our approach is the use of a different mechanism (e.g., mutation, crossover, random initialization) to generate each solution to be evaluated. Through computational experiments on test problems, our approach is compared with the (μ + 1)ES-style algorithm where a solution generation mechanism is pre-specified and fixed throughout the execution of the algorithm.
机译:在交互式进化计算(IEC)中,每个解决方案都由人类用户评估。通常,所检查溶液的总数很少。在诸如助听器设计和音乐创作的某些应用中,人类用户一次只能评估一个解决方案。而且,难以进行精确的数值评估。基于这些考虑,我们在以下假设下制定了一个对人类用户的健康评估能力具有最低要求的IEC模型:他们一次只能评估一个解决方案,他们只能记住一个刚刚评估过的解决方案,他们对当前解决方案的评估结果是是否优于先前的解决方案,应在预先指定的评估次数之后确定评估方案中最佳的解决方案。在本文中,我们首先详细解释我们的IEC模型。接下来,我们为我们的IEC模型提出一种(μ+1)ES样式的算法。然后,我们为IEC模型提出了一种脱机的元级方法来进行自动化算法设计。我们方法的主要特征是使用不同的机制(例如,变异,交叉,随机初始化)来生成每个要评估的解决方案。通过对测试问题的计算实验,我们的方法与(μ+1)ES样式的算法进行了比较,在该算法中预先指定了解决方案生成机制并在整个算法执行过程中对其进行了固定。

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