애스크로AIPublic Preview
← 학술논문 검색
학술논문경영과학2012.03 발행KCI 피인용 6

수요 특성이 계층적 수요예측법의 퍼포먼스에 미치는 영향:해군 수리부속 사례 연구

The Impact of Demand Features on the Performance of Hierarchical Forecasting:Case Study for Spare parts in the Navy

문성민(해군사관학교)

29권 1호, 101~113쪽

초록

The demand for naval spare parts is intermittent and erratic. This feature, referred to as non-normal demand, makes forecasting difficult. Hierarchical forecasting using an aggregated time series can be more reliable to predict non-normal demand than direct forecasting. In practice the performance of hierarchical forecasting is not always superior to direct forecasting. The relative performance of the alternative forecasting methods depends on the demand features. This paper analyses the influence of the demand features on the performance of the alternative forecasting methods that use hierarchical and direct forecasting. Among various demand features variability, kurtosis, skewness and equipment groups are shown to significantly influence on the performance of the alternative forecasting methods.

Abstract

The demand for naval spare parts is intermittent and erratic. This feature, referred to as non-normal demand, makes forecasting difficult. Hierarchical forecasting using an aggregated time series can be more reliable to predict non-normal demand than direct forecasting. In practice the performance of hierarchical forecasting is not always superior to direct forecasting. The relative performance of the alternative forecasting methods depends on the demand features. This paper analyses the influence of the demand features on the performance of the alternative forecasting methods that use hierarchical and direct forecasting. Among various demand features variability, kurtosis, skewness and equipment groups are shown to significantly influence on the performance of the alternative forecasting methods.

발행기관:
한국경영과학회
분류:
경영학

AI 법률 상담

이 논문의 주제에 대해 더 알고 싶으신가요?

460만+ 법률 자료에서 관련 판례·법령·해석례를 찾아 답변합니다

AI 상담 시작
수요 특성이 계층적 수요예측법의 퍼포먼스에 미치는 영향:해군 수리부속 사례 연구 | 경영과학 2012 | AskLaw | 애스크로 AI