Construction of Evaluation Datasets for Trend Forecasting Studies

Shogo Matsuno, Sakae Mizuki, Takeshi Sakaki
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Abstract

In this study, we discuss issues in the traditional evaluation norms of trend forecasts, outline a suitable evaluation method, propose an evaluation dataset construction procedure, and publish Trend Dataset: the dataset we have created. As trend predictions often yield economic benefits, trend forecasting studies have been widely conducted. However, a consistent and systematic evaluation protocol has yet to be adopted. We consider that the desired evaluation method would address the performance of predicting which entity will trend, when a trend occurs, and how much it will trend based on a reliable indicator of the general public's recognition as a gold standard. Accordingly, we propose a dataset construction method that includes annotations for trending status (trending or non-trending), degree of trending (how well it is recognized), and the trend period corresponding to a surge in recognition rate. The proposed method uses questionnaire-based recognition rates interpolated using Internet search volume, enabling trend period annotation on a weekly timescale. The main novelty is that we survey when the respondents recognize the entities that are highly likely to have trended and those that haven't. This procedure enables a balanced collection of both trending and non-trending entities. We constructed the dataset and verified its quality. We confirmed that the interests of entities estimated using Wikipedia information enables the efficient collection of trending entities a priori. We also confirmed that the Internet search volume agrees with public recognition rate among trending entities.
趋势预测研究评价数据集的构建
在本研究中,我们讨论了传统趋势预测评估规范中的问题,概述了一种合适的评估方法,提出了一个评估数据集的构建过程,并发布了我们创建的趋势数据集。由于趋势预测往往能带来经济效益,趋势预测研究已被广泛开展。但是,尚未通过一致和系统的评价方案。我们认为,期望的评估方法将根据公众认可的可靠指标作为黄金标准,解决预测哪个实体将出现趋势、何时出现趋势以及趋势程度的性能问题。因此,我们提出了一种数据集构建方法,该方法包括趋势状态(趋势或非趋势)、趋势程度(识别程度)以及与识别率激增相对应的趋势周期的注释。该方法使用基于问卷的识别率插值,利用互联网搜索量,实现每周时间尺度上的趋势周期注释。主要的新颖之处在于,当受访者认识到哪些实体极有可能有趋势,哪些没有趋势时,我们就会进行调查。此过程可以平衡地收集趋势实体和非趋势实体。我们构建了数据集并验证了其质量。我们证实,使用维基百科信息估计实体的兴趣可以有效地先验地收集趋势实体。我们还证实,互联网搜索量与趋势实体中的公众认知率一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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