有序回归的模糊划分区间函数模型

M. Inuiguchi, H. Inoue
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引用次数: 1

摘要

本文提出了一种用于有序回归的模糊划分区间函数模型,作为区间UTA方法的扩展。UTA方法被称为多准则决策问题的辅助决策工具。UTA方法在假定可加性独立性的前提下,识别出与给定偏好信息兼容的可加性效用函数。然而,这一假设在多属性效用理论中是相当强的。本文提出了一种在较弱假设下识别的区间实用新型。假设效用函数用一个具有可加区间效用函数的模糊推理模型表示,即广义的可加效用函数模型。通过求解给定偏好信息下的线性规划问题,我们可以识别出所提出的模型,并且使用所识别的模型可以很容易地进行偏好评估。我们通过数值实验检验了所提出模型的性能,假设决策者在效用无关的假设下具有效用函数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Fuzzily Partitioned Interval Function Model for Ordinal Regression
In this paper, we propose a fuzzily partitioned interval function model for ordinal regression as an extension of the interval UTA method. UTA method is known as a decision-aiding tool in multiple criteria decision problems. In UTA method, an additive utility function compatible to given preference information is identified under the assumption of the additive independence. However, this assumption is rather strong as is known in multiattribute utility theory. In this paper, we propose an interval utility model identified under a weaker assumption. We assume that the utility function is expressed by a fuzzy reasoning model with additive interval utility functions, a generalized additive utility function model. We show that the proposed model can be identified by solving a linear programming problem under given preference information and that preference evaluation can be done easily by using the identified model. We examine the performance of the proposed model by numerical experiments assuming that the decision maker has a utility function under the assumption of utility independence.
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