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Expert Learning through Generalized Inverse Multiobjective Optimization: Models, Insights, and Algorithms

机译:通过广义逆多目标优化的专家学习:模型,见解和算法

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We consider a new unsupervised learning task of inferring parameters of a multiobjective decision making model, based on a set of observed decisions from the human expert. This setting is important in applications (such as the task of portfolio management) where it may be difficult to obtain the human expert's intrinsic decision making model. We formulate such a learning problem as an inverse multiobjective optimization problem (IMOP) and propose its first sophisticated model with statistical guarantees. Then, we reveal several fundamental connections between IMOP, K-means clustering, and manifold learning. Leveraging these critical insights and connections, we propose two algorithms to solve IMOP through manifold learning and clustering. Numerical results confirm the effectiveness of our model and the computational efficacy of algorithms.
机译:我们考虑了一种新的无监督学习任务,即根据人类专家的一组观察到的决策,推断多目标决策模型的推断参数。 此设置在应用程序中非常重要(例如投资组合管理的任务),可能难以获得人类专家的内在决策模型可能很困难。 我们将这样一个学习问题作为反向多目标优化问题(IMOP),并提出其第一个具有统计保证的复杂模型。 然后,我们揭示了IMOP,K均值聚类和多方面学习之间的几个基本连接。 利用这些关键的见解和联系,我们提出了两种算法来解决in imop通过多方面的学习和聚类来解决。 数值结果证实了我们模型的有效性以及算法的计算效果。

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