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An Application of Rule-based Forecasting to a Situation Lacking Domain Knowledge

机译:基于规则的预测在缺乏领域知识的情况下的应用

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摘要

Rule-based forecasting (RBF) uses rules to combine forecasts from simple extrapolation methods. Weights for combining the rules use statistical and domain-based features of time series. RBF was originally developed, tested, and validated only on annual data. For the M3-Competition, three major modifications were made to RBF. First, due to the absence of much in the way of domain knowledge, we prepared the forecasts under the assumption that no domain knowledge was available. This removes what we believe is one of RBF\u27s primary advantages. We had to re-calibrate some of the rules relating to causal forces to allow for this lack of domain knowledge. Second, automatic identification procedures were used for six time-series features that had previously been identified using judgment. This was done to reduce cost and improve reliability. Third, we simplified the rule-base by removing one method from the four that were used in the original implementation. Although this resulted in some loss in accuracy, it reduced the number of rules in the rule-base from 99 to 64. This version of RBF still benefits from the use of prior findings on extrapolation, so we expected that it would be substantially more accurate than the random walk and somewhat more accurate than equal weights combining. Because most of the previous work on RBF was done using annual data, we especially expected it to perform well with annual data.
机译:基于规则的预测(RBF)使用规则来组合来自简单外推方法的预测。组合规则的权重使用时间序列的统计和基于域的功能。 RBF最初仅根据年度数据进行开发,测试和验证。对于M3竞赛,对RBF进行了三项主要修改。首先,由于缺乏领域知识的方式,我们在没有领域知识可用的假设下准备了预测。这消除了我们认为是RBF的主要优势之一。我们必须重新校准一些与因果力有关的规则,以允许缺乏领域知识。其次,对六个时间序列特征使用了自动识别程序,这些特征先前已使用判断进行了识别。这样做是为了降低成本并提高可靠性。第三,我们通过从原始实现中使用的四种方法中删除一种方法,简化了规则库。尽管这会导致准确性下降,但它会将规则库中的规则数量从99个减少到64个。此版本的RBF仍得益于先前对推论的发现,因此我们希望它会更加准确比随机游走要精确得多,并且比等权重合并要精确一些。由于先前有关RBF的大部分工作都是使用年度数据完成的,因此我们特别希望它能与年度数据一起很好地工作。

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