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Cross-domain Meta-learning for Time-series Forecasting

机译:用于时间序列预测的跨域元学习

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There are many algorithms that can be used for the time-series forecasting problem, ranging from simple (e.g. Moving Average) to sophisticated Machine Learning approaches (e.g. Neural Networks). Most of these algorithms require a number of user-defined parameters to be specified, leading to exponential explosion of the space of potential solutions. Since the trial-and-error approach to finding a good algorithm for solving a given problem is typically intractable, researchers and practitioners need to resort to a more intelligent search strategy, with one option being to constraint the search space using past experience - an approach known as Meta-learning. Although potentially attractive, Meta-learning comes with its own challenges. Gathering a sufficient number of Meta-examples, which in turn requires collecting and processing multiple datasets from each problem domain under consideration is perhaps the most prominent issue. In this paper, we are investigating the situations in which the use of additional data can improve performance of a Meta-learning system, with focus on cross-domain transfer of Meta-knowledge. A similarity-based cluster analysis of Meta-features has also been performed in an attempt to discover homogeneous groups of time-series with respect to Meta-learning performance. Although the experiments revealed limited room for improvement over the overall best base-learner, the Meta-learning approach turned out to be a safe choice, minimizing the risk of selecting the least appropriate base-learner.
机译:时间序列预测问题可以使用许多算法,从简单的算法(例如移动平均)到复杂的机器学习方法(例如神经网络)。这些算法大多数都需要指定许多用户定义的参数,从而导致潜在解决方案的空间呈指数增长。由于反复试验的方法通常很难找到解决特定问题的良好算法,因此研究人员和从业人员需要诉诸更智能的搜索策略,其中一种选择是利用过去的经验来限制搜索空间-一种方法称为元学习。尽管元学习具有潜在的吸引力,但它也面临着自身的挑战。收集足够多的元示例,这反过来又需要从正在考虑的每个问题域中收集和处理多个数据集,这也许是最突出的问题。在本文中,我们正在研究使用附加数据可以改善元学习系统性能的情况,重点是元知识的跨域传输。还已经对元功能进行了基于相似度的聚类分析,以尝试发现关于元学习性能的时间序列的同类组。尽管实验表明,相对于整体最佳基础学习者而言,改进的空间有限,但元学习方法却是一种安全的选择,可将选择最不适合的基础学习者的风险降到最低。

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