A network-based discrete choice model for decision-based design

IF 1.8 Q3 ENGINEERING, MANUFACTURING
Design Science Pub Date : 2023-03-24 DOI:10.1017/dsj.2023.4
Z. Sha, Yaxin Cui, Yinshuang Xiao, A. Stathopoulos, N. Contractor, Yan Fu, Wei Chen
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引用次数: 0

Abstract

Abstract Customer preference modelling has been widely used to aid engineering design decisions on the selection and configuration of design attributes. Recently, network analysis approaches, such as the exponential random graph model (ERGM), have been increasingly used in this field. While the ERGM-based approach has the new capability of modelling the effects of interactions and interdependencies (e.g., social relationships among customers) on customers’ decisions via network structures (e.g., using triangles to model peer influence), existing research can only model customers’ consideration decisions, and it cannot predict individual customer’s choices, as what the traditional utility-based discrete choice models (DCMs) do. However, the ability to make choice predictions is essential to predicting market demand, which forms the basis of decision-based design (DBD). This paper fills this gap by developing a novel ERGM-based approach for choice prediction. This is the first time that a network-based model can explicitly compute the probability of an alternative being chosen from a choice set. Using a large-scale customer-revealed choice database, this research studies the customer preferences estimated from the ERGM-based choice models with and without network structures and evaluates their predictive performance of market demand, benchmarking the multinomial logit (MNL) model, a traditional DCM. The results show that the proposed ERGM-based choice modelling achieves higher accuracy in predicting both individual choice behaviours and market share ranking than the MNL model, which is mathematically equivalent to ERGM when no network structures are included. The insights obtained from this study further extend the DBD framework by allowing explicit modelling of interactions among entities (i.e., customers and products) using network representations.
基于网络的决策设计离散选择模型
摘要客户偏好建模已被广泛用于帮助工程设计决策,以选择和配置设计属性。近年来,网络分析方法,如指数随机图模型(ERGM),在该领域得到了越来越多的应用。虽然基于ERGM的方法具有新的能力,可以通过网络结构(例如,使用三角形来建模同伴影响)来建模交互和相互依赖性(例如,客户之间的社会关系)对客户决策的影响,但现有的研究只能建模客户的考虑决策,而不能预测单个客户的选择,正如传统的基于效用的离散选择模型(DCM)所做的那样。然而,做出选择预测的能力对于预测市场需求至关重要,这构成了基于决策的设计(DBD)的基础。本文通过开发一种新的基于ERGM的选择预测方法来填补这一空白。这是基于网络的模型首次能够明确地计算从选择集中选择替代方案的概率。本研究使用一个大规模的客户揭示选择数据库,研究了在有和没有网络结构的情况下,基于ERGM的选择模型估计的客户偏好,并以传统DCM的多项式logit(MNL)模型为基准,评估了其对市场需求的预测性能。结果表明,与MNL模型相比,所提出的基于ERGM的选择模型在预测个人选择行为和市场份额排名方面实现了更高的准确性,MNL模型在数学上等同于不包括网络结构的ERGM。从这项研究中获得的见解进一步扩展了DBD框架,允许使用网络表示对实体(即客户和产品)之间的交互进行显式建模。
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来源期刊
Design Science
Design Science ENGINEERING, MANUFACTURING-
CiteScore
4.80
自引率
12.50%
发文量
19
审稿时长
22 weeks
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