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A belief rule based expert system for predicting consumer preference in new product development

机译:基于信念规则的专家系统,用于预测新产品开发中的消费者偏好

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In the decision making process of new product development, companies need to understand consumer preference for newly developed products. A recently developed belief rule based (BRB) inference methodology is used to formulate the relationship between consumer preference and product attributes. However, when the number of product attributes is large, the methodology encounters the challenge of dealing with an oversized rule base. To overcome the challenge, the paper incorporates factor analysis into the BRB methodology and develops a BRB expert system for predicting consumer preference of a new product. Firstly, a small number of factors are extracted from product attributes by conducting both exploratory and confirmatory factor analysis. Secondly, a belief rule base is constructed to model the causal relationships between the characteristic factors and consumer preference for products using experts' knowledge. Furthermore, a BRB expert system is developed for predicting consumer preference in new product development, where the factor values transformed from product attributes are taken as inputs. Relevant rules in the system are activated by the input data, and then the activated rules are aggregated using the evidential reasoning (ER) approach to generate the predicted consumer preference for each product. Finally, the BRB expert system is illustrated using the data collected from 100 consumers of several tea stores through a market survey. The results show that the prototype of the BRB expert system has superior fitting capability on training data and high prediction accuracy on testing data, and it has great potential to be applied to consumer preference prediction in new product development. (C) 2015 Elsevier B.V. All rights reserved.
机译:在新产品开发的决策过程中,公司需要了解消费者对新开发产品的偏好。最近开发的基于信念规则(BRB)的推理方法用于制定消费者偏好与产品属性之间的关系。但是,当产品属性的数量很大时,该方法会遇到处理超大规则库的挑战。为了克服这一挑战,本文将因素分析整合到了BRB方法中,并开发了一种BRB专家系统来预测新产品的消费者偏好。首先,通过进行探索性和确认性因素分析,从产品属性中提取少量因素。其次,建立了一个信念规则库,以利用专家的知识对特征因素与消费者对产品的偏好之间的因果关系进行建模。此外,开发了一种BRB专家系统来预测新产品开发中的消费者偏好,其中从产品属性转换而来的因子值将作为输入。通过输入数据激活系统中的相关规则,然后使用证据推理(ER)方法汇总激活的规则,以生成每种产品的预测消费者偏好。最后,通过市场调查从多个茶店的100位消费者收集的数据中说明了BRB专家系统。结果表明,BRB专家系统的原型在训练数据上具有优越的拟合能力,在测试数据上具有较高的预测准确度,在新产品开发中具有广泛的消费者偏好预测潜力。 (C)2015 Elsevier B.V.保留所有权利。

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