具有稀疏交互条件的学习偏好模型

Margot Herin, P. Perny, Nataliya Sokolovska
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引用次数: 1

摘要

多标准决策需要定义相互冲突和可能相互作用的标准的结果。由于可能的交互具有组合性,在决策模型中允许标准交互增加了偏好学习任务的复杂性。在本文中,我们提出了一种学习决策模型的方法,该方法从偏好数据中揭示交互模式并尽可能保持简单。我们考虑像多线性效用或Choquet积分这样的加权聚合函数,承认包含非线性项的表示,测量附加到某些标准组合的共同利益或惩罚。称为Möbius质量的加权系数模拟了标准之间的积极或消极协同作用。我们提出了一种学习Möbius质量的方法,该方法基于迭代加权最小二乘进行稀疏恢复,并基于二元化来提高可扩展性。在可能涉及超过20个标准的聚合问题中,该方法被应用于从偏好示例中学习多线性实用新型的稀疏表示和离散Choquet积分的合取/析取形式。
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Learning Preference Models with Sparse Interactions of Criteria
Multicriteria decision making requires defining the result of conflicting and possibly interacting criteria. Allowing criteria interactions in a decision model increases the complexity of the preference learning task due to the combinatorial nature of the possible interactions. In this paper, we propose an approach to learn a decision model in which the interaction pattern is revealed from preference data and kept as simple as possible. We consider weighted aggregation functions like multilinear utilities or Choquet integrals, admitting representations including non-linear terms measuring the joint benefit or penalty attached to some combinations of criteria. The weighting coefficients known as Möbius masses model positive or negative synergies among criteria. We propose an approach to learn the Möbius masses, based on iterative reweighted least square for sparse recovery, and dualization to improve scalability. This approach is applied to learn sparse representations of the multilinear utility model and conjunctive/disjunctive forms of the discrete Choquet integral from preferences examples, in aggregation problems possibly involving more than 20 criteria.
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