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A preference learning framework for multiple criteria sorting with diverse additive value models and valued assignment examples

机译:具有多种添加剂值模型和值分配示例的多个标准排序的偏好学习框架

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摘要

We present a preference learning framework for multiple criteria sorting. We consider sorting procedures applying an additive value model with diverse types of marginal value functions (including linear, piecewise-linear, splined, and general monotone ones) under a unified analytical framework. Differently from the existing sorting methods that infer a preference model from crisp decision examples, where each reference alternative is assigned to a unique class, our framework allows considering valued assignment examples in which a reference alternative can be classified into multiple classes with respective credibility degrees. We propose an optimization model for constructing a preference model from such valued examples by maximizing the credible consistency among reference alternatives. To improve the predictive ability of the constructed model on new instances, we employ the regularization techniques. Moreover, to enhance the capability of addressing large-scale datasets, we introduce a state-of-the-art algorithm that is widely used in the machine learning community to solve the proposed optimization model in a computationally efficient way. Using the constructed additive value model, we determine both crisp and valued assignments for non-reference alternatives. Moreover, we allow the Decision Maker to prioritize the importance of classes and give the method a flexibility to adjust classification performance across classes according to the specified priorities. The practical usefulness of the analytical framework is demonstrated on a real-world dataset by comparing it to several existing sorting methods. (C) 2020 Elsevier B.V. All rights reserved.
机译:我们为多个标准排序提供了一个偏好的学习框架。我们考虑在统一分析框架下使用不同类型的边际值函数(包括线性,分段 - 线性,花键和通用单调函数)进行分类程序。不同地从现有的排序方法推断从清晰的决策示例推断出偏好模型,其中每个参考替代方案被分配给唯一类,我们的框架允许考虑值的分配示例,其中参考替代方案可以分为具有相应的信誉度的多个类别。我们提出了一种优化模型,用于通过最大化参考替代方案之间的可信度量来构建来自这种有价值的实例的偏好模型。为了提高构建模型在新实例上的预测能力,我们采用了正则化技术。此外,为了提高寻址大规模数据集的能力,我们介绍了一种最先进的算法,这些算法广泛用于机器学习界以以计算有效的方式解决所提出的优化模型。使用构造的添加剂值模型,我们确定非参考替代品的清晰和有价值的分配。此外,我们允许决策者优先考虑类的重要性,并使方法根据指定的优先级调整跨类上的分类性能的灵活性。通过将其与几个现有的排序方法进行比较,在真实世界数据集上对分析框架的实际有用性进行了演示。 (c)2020 Elsevier B.v.保留所有权利。

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