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Learning Economic Parameters from Revealed Preferences

机译:从显示的偏好中学习经济参数

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A recent line of work, starting with Beigman and Vohra and Zadimoghaddam and Roth, has addressed the problem of learning a utility function from revealed preference data. The goal here is to make use of past data describing the purchases of a utility maximizing agent when faced with certain prices and budget constraints in order to produce a hypothesis function that can accurately forecast the future behavior of the agent. In this work we advance this line of work by providing sample complexity guarantees and efficient algorithms for a number of important classes. By drawing a connection to recent advances in multi-class learning, we provide a computationally efficient algorithm with tight sample complexity guarantees (Θ(d/ε) for the case of d goods) for learning linear utility functions under a linear price model. This solves an open question in Zadimoghaddam and Roth. Our technique yields numerous generalizations including the ability to learn other well-studied classes of utility functions, to deal with a misspecified model, and with non-linear prices.
机译:从Beigman和Vohra以及Zadimoghaddam和Roth开始的最新工作已经解决了从显示的偏好数据中学习效用函数的问题。这里的目标是利用过去的数据来描述当面对某些价格和预算约束时,效用最大化的代理商的购买情况,以便产生可以准确预测代理商的未来行为的假设函数。在这项工作中,我们通过为多个重要类提供示例复杂性保证和高效算法来推进这一工作。通过与多类学习的最新进展建立联系,我们提供了一种计算效率高的算法,该算法具有严格的样本复杂度保证(对于d货物,为Θ(d /ε)),用于在线性价格模型下学习线性效用函数。这解决了Zadimoghaddam和Roth的一个公开问题。我们的技术产生了许多概括,包括学习其他经过深入研究的效用函数类别,处理错误指定的模型以及非线性价格的能力。

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