A neural network approach-decision neural network (DNN) for preference assessment

Jing Chen, Song Lin
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引用次数: 23

Abstract

A new neural-network-based approach to assess the preference of a decision-maker (DM) for the multiple objective decision making (MODM) problem is presented in this paper. A new neural network structure with a "twin-topology" is introduced in this approach. We call this neural network a decision neural network (DNN). The characteristics of the DNN are discussed, and the training algorithm for DNN is presented as well. The DNN enables the decision-maker to make pairwise comparisons between different alternatives, and these comparison results are used as learning samples to train the DNN. The DNN is applicable for both accurate and inaccurate comparisons (results are given in approximate values or interval scales). The performance of the DNN is evaluated with several typical forms of utility functions. Results show that DNN is an effective and efficient way for modeling the preference of a decision-maker.
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偏好评估的神经网络方法-决策神经网络(DNN)
针对多目标决策问题,提出了一种新的基于神经网络的决策者偏好评估方法。该方法引入了一种新的“双拓扑”神经网络结构。我们称这种神经网络为决策神经网络(DNN)。讨论了深度神经网络的特点,并给出了深度神经网络的训练算法。DNN使决策者能够在不同的备选方案之间进行两两比较,这些比较结果被用作学习样本来训练DNN。深度神经网络适用于准确和不准确的比较(结果以近似值或区间尺度给出)。用几种典型形式的效用函数来评估深度神经网络的性能。结果表明,深度神经网络是一种有效的决策者偏好建模方法。
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