Development and validation of a rule-based time series complexity scoring technique to support design of adaptive forecasting DSS
作者:
Highlights:
• A rule-based method, CST, for scoring time series complexity is developed and validated.
• Validations confirm that the CST meaningfully distinguishes simple from complex series as below.
• Forecast errors from benchmark methods for simple series are lower than for those scored as complex.
• CST can be integrated into FDSS to provide decision support that adapts to time series complexity.
• A framework for development of such an adaptive system is proposed.
摘要
Evidence from forecasting research gives reason to believe that understanding time series complexity can enable design of adaptive forecasting decision support systems (FDSSs) to positively support forecasting behaviors and accuracy of outcomes. Yet, such FDSS design capabilities have not been formally explored because there exists no systematic approach to identifying series complexity. This study describes the development and validation of a rule-based complexity scoring technique (CST) that generates a complexity score for time series using 12 rules that rely on 14 features of series. The rule-based schema was developed on 74 series and validated on 52 holdback series using well-accepted forecasting methods as benchmarks. A supporting experimental validation was conducted with 14 participants who generated 336 structured judgmental forecasts for sets of series classified as simple or complex by the CST. Benchmark comparisons validated the CST by confirming, as hypothesized, that forecasting accuracy was lower for series scored by the technique as complex when compared to the accuracy of those scored as simple. The study concludes with a comprehensive framework for design of FDSS that can integrate the CST to adaptively support forecasters under varied conditions of series complexity. The framework is founded on the concepts of restrictiveness and guidance and offers specific recommendations on how these elements can be built in FDSS to support complexity.
论文关键词:Benchmark forecasting,Forecasting decision support systems,Structured judgment,Forecasting,Time series,Rule-based Forecasting
论文评审过程:Received 29 May 2015, Revised 29 December 2015, Accepted 29 December 2015, Available online 7 January 2016, Version of Record 23 February 2016.
论文官网地址:https://doi.org/10.1016/j.dss.2015.12.009