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Optimal Airline Ticket Purchasing Using Automated User-Guided Feature Selection

机译:使用自动用户指导的特征选择来优化机票购买

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Airline ticket purchase timing is a strategic problem that requires both historical data and domain knowledge to solve consistently.Even with some historical information (often a feature of modern travel reservation web sites),it is difficult for consumers to make true cost-minimizing decisions.To address this problem,we introduce an automated agent which is able to optimize purchase timing on behalf of customers and provide performance estimates of its computed action policy based on past performance.We apply machine learning to recent ticket price quotes from many competing airlines for the target flight route.Our novelty lies in extending this using a systematic feature extraction technique incorporating elementary user-provided domain knowledge that greatly enhances the performance of machine learning algorithms.Using this technique,our agent achieves much closer to the optimal purchase policy than other proposed decision theoretic approaches for this domain.
机译:机票购买时间是一个战略性问题,需要历史数据和领域知识才能始终如一地解决。即使有一些历史信息(通常是现代旅行预订网站的功能),消费者也很难做出真正的成本最小化决策。为了解决这个问题,我们引入了一种自动代理,该代理能够代表客户优化购买时机,并根据过去的表现提供其计算出的行动政策的绩效估算。我们将机器学习应用于许多竞争对手的航空公司最近的机票价格报价中目标飞行路线。我们的新颖之处在于使用系统的特征提取技术来扩展此功能,该技术结合了用户提供的基本领域知识,从而极大地提高了机器学习算法的性能。通过使用这种技术,我们的代理商比其他提议的代理商更接近最优购买策略这个领域的决策理论方法。

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