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A demand forecasting model based on the improved Bass model for fast fashion clothing

机译:一种基于改进的BASS模型的快速时尚服装需求预测模型

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Purpose This paper examines the problem of lack of historical data and inadequate consideration of factors influencing demand in the forecasting of demand for fast fashion clothing and proposes an improved Bass model for the forecasting of such a demand and the demand for new clothing products. Design/methodology/approach From the perspective of how to solve the lack of data and improve the precision of the clothing demand forecast, this paper studies the measurement of clothing similarity and the addition of demand impact factors. Using the fuzzy clustering-rough set method, the degree of resemblance of clothing is determined, which provides a basis for the scientific utilisation of historical data of similar clothing to forecast the demand for new clothing. Besides, combining the influence of consumer preferences and seasonality on demand forecasting, an improved Bass model for a fast fashion clothing demand forecast is proposed. Finally, with a forecasting example of demand for clothing, this study also tests the validity of the method. Findings The objective measurement method of clothing similarity in this paper solves the problem of the difficult forecasting of demand for fast fashion clothing due to a lack of sales data at the preliminary stage of the clothing launch. The improved Bass model combines, comprehensively, consumer preferences and seasonality and enhances the forecast precision of demand for fast fashion clothing. Originality/value The paper puts forward a scientific, quantitative method for the forecasting of new clothing products using historical sales data of similar clothing, thus solving the problem of lack of sales data of the fashion.
机译:目的本文审查了缺乏历史数据的问题,并考虑了影响快速时装服装需求预测需求的因素的因素,并提出了一种改进的低音模型,用于预测这种需求和对新型服装产品的需求。设计/方法/方法从如何解决数据缺乏数据,提高服装需求预测的精度,本文研究了衣服相似性的测量和需求影响因素。使用模糊聚类粗糙集方法,确定了衣物的相似程度,为类似衣服的历史数据提供了科学利用的基础,以预测新衣服的需求。此外,提出了结合消费者偏好和季节性对需求预测的影响,提出了一种改进的BASS模型,用于快速时尚服装需求预测。最后,通过预测服装需求的例子,本研究还测试了该方法的有效性。结果表明本文的服装相似性的客观测量方法解决了由于服装发布初步阶段缺乏销售数据,因此解决了快速时装服装需求困难的预测问题。改进的低音模型结合了全面,消费者偏好和季节性,并提高了快速时装服装需求的预测精度。原创性/价值本文提出了一种使用类似服装的历史销售数据预测新服装产品的科学,定量方法,从而解决了缺乏时尚销售数据的问题。

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