Many approaches have been proposed for early classification of time series in light of itssignificance in a wide range of applications including healthcare, transportation and fi-nance. Until now, the early classification problem has been dealt with by considering onlyirrevocable decisions. This paper introduces a new problem calledearly and revocabletimeseries classification, where the decision maker can revoke its earlier decisions based on thenew available measurements. In order to formalize and tackle this problem, we propose anew cost-based framework and derive two new approaches from it. The first approach doesnot consider explicitly the cost of changing decision, while the second one does. Exten-sive experiments are conducted to evaluate these approaches on a large benchmark of realdatasets. The empirical results obtained convincingly show (i) that the ability of revok-ing decisions significantly improves performance over the irrevocable regime, and (ii) thattaking into account the cost of changing decision brings even better results in general.Keywords:revocable decisions, cost estimation, online decision making
翻译:鉴于时间序列在包括保健、交通和自发性在内的广泛应用中的重要性,提出了许多早期分类方法,以便根据时间序列的早期分类,因为时间序列在包括保健、交通和自发性在内的广泛应用中具有重要性。到目前为止,早期分类问题一直通过考虑只能撤销的决定来解决。本文件提出了一个新问题,即早期和可撤销的时间序列分类,决策者可以根据新的现有测量结果撤销其先前的决定。为了正式确定和解决这一问题,我们提出了新的基于成本的框架,并从中得出两个新的方法。第一种方法没有明确考虑改变决定的成本,而第二种方法则没有考虑。进行了大量实验,以根据一个大的实际数据集基准评价这些方法。取得的经验性结果令人信服地表明:(一) 重新投票决定的能力大大改进了对不可撤销制度的业绩,以及(二) 考虑到改变决定的成本,一般而言,改变决定产生更好的结果。关键词:可撤销的决定、成本估计、在线决定。