Multi-Attribute Gain Loss (MAGL) method to predict choices

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2023-09-06 DOI:10.1016/j.jmp.2023.102804
Ram Kumar Dhurkari
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引用次数: 0

Abstract

A better method named MAGL (Multi-Attribute Gain Loss) is proposed to predict choices made by consumers in a multi-attribute setting. The MAGL method uses the tenets of prospect theory, Kauffman’s complexity theory, norm theory, and context-dependent choice theory. Since the choice processes are often found to be affected by the context or the choice set, the proposed MAGL method is able to model and predict the context-dependent choice behavior of consumers. The predictions of the MAGL method are useful to marketing/product managers in designing new products. The output of the MAGL method can be analyzed to determine which combination of attribute values is outperforming in a specific competitive market condition. A decision support system can be designed and developed for marketing/product managers where they can experiment by introducing, redesigning, or removing products and simulate the market share of various products for a similar consumer population.

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多属性增益损失(MAGL)方法预测选择
提出了一种更好的方法MAGL(Multi-AttributeGain-Loss)来预测消费者在多属性环境中的选择。MAGL方法使用了前景理论、考夫曼复杂性理论、规范理论和上下文相关选择理论的原理。由于选择过程经常受到上下文或选择集的影响,因此所提出的MAGL方法能够对消费者的上下文相关选择行为进行建模和预测。MAGL方法的预测对营销/产品经理设计新产品很有用。可以分析MAGL方法的输出,以确定哪个属性值组合在特定的竞争市场条件下表现优异。可以为营销/产品经理设计和开发决策支持系统,他们可以通过引入、重新设计或移除产品进行实验,并模拟类似消费者群体的各种产品的市场份额。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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