TY - JOUR
T1 - Mean Local Trend Error and fuzzy-inference-based multicriteria evaluation for supply chain demand forecasting
AU - Dan, Jingpei
AU - Xie, Fuding
AU - Dong, Fangyan
AU - Hirota, Kaoru
PY - 2011/3
Y1 - 2011/3
N2 - To overcome the inefficiency arising from the separate use of conventional forecast accuracy measures that suffer from the bullwhip effect, especially in uncertain and vague supply chain environments, a forecast accuracy measure, Mean Local Trend Error (MLTE) and a fuzzy-inference-based multicriteria evaluation method are proposed. In contrast to conventional measures, MLTE survives the bullwhip effect by evaluating forecasts based on local trend error. The proposed evaluation method applies fuzzy inference to deal with the uncertainty and vagueness in supply chains and makes a comprehensive evaluation by using an aggregated forecast accuracy index (ACCU-RACY), which is developed based on fuzzy inference by integrating the proposed MLTE and a conventional measure MAPE, thereby enhancing its efficiency for evaluating supply chain demand forecasts. The proposed MLTE and evaluation method are confirmed by comparative experiments with MAPE based on evaluating four typical forecasting methods-a simple moving average, single exponential smoothing, autoregressive, and autoregressive moving average-on an actual manufacturing-order dataset. The results show that MLTE yields a triple and ACCURACY a quadruple improvement in terms of average distinguishability compared to MAPE. The proposal has potential applications in stock market forecast evaluations.
AB - To overcome the inefficiency arising from the separate use of conventional forecast accuracy measures that suffer from the bullwhip effect, especially in uncertain and vague supply chain environments, a forecast accuracy measure, Mean Local Trend Error (MLTE) and a fuzzy-inference-based multicriteria evaluation method are proposed. In contrast to conventional measures, MLTE survives the bullwhip effect by evaluating forecasts based on local trend error. The proposed evaluation method applies fuzzy inference to deal with the uncertainty and vagueness in supply chains and makes a comprehensive evaluation by using an aggregated forecast accuracy index (ACCU-RACY), which is developed based on fuzzy inference by integrating the proposed MLTE and a conventional measure MAPE, thereby enhancing its efficiency for evaluating supply chain demand forecasts. The proposed MLTE and evaluation method are confirmed by comparative experiments with MAPE based on evaluating four typical forecasting methods-a simple moving average, single exponential smoothing, autoregressive, and autoregressive moving average-on an actual manufacturing-order dataset. The results show that MLTE yields a triple and ACCURACY a quadruple improvement in terms of average distinguishability compared to MAPE. The proposal has potential applications in stock market forecast evaluations.
KW - Forecasting
KW - Fuzzy inference
KW - Multicriteria evaluation
KW - Supply chain
KW - Time series data
UR - http://www.scopus.com/inward/record.url?scp=79952978286&partnerID=8YFLogxK
U2 - 10.20965/jaciii.2011.p0134
DO - 10.20965/jaciii.2011.p0134
M3 - Article
AN - SCOPUS:79952978286
SN - 1343-0130
VL - 15
SP - 134
EP - 144
JO - Journal of Advanced Computational Intelligence and Intelligent Informatics
JF - Journal of Advanced Computational Intelligence and Intelligent Informatics
IS - 2
ER -