Visualization of multi-algorithm clustering for better economic decisions — The case of car pricing

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Clustering decisions frequently arise in business applications such as recommendations concerning products, markets, human resources, etc. Currently, decision makers must analyze diverse algorithms and parameters on an individual basis in order to establish preferences on the decision-making issues they face; because there is no supportive model or tool which enables comparing different result-clusters generated by these algorithms and parameters combinations.The Multi-Algorithm-Voting (MAV) methodology enables not only visualization of results produced by diverse clustering algorithms, but also provides quantitative analysis of the results.The current research applies MAV methodology to the case of recommending new-car pricing. The findings illustrate the impact and the benefits of such decision support system.

论文关键词:Decision making,Decision support system,Cluster analysis,Visualization techniques,Multi-algorithm-voting,Pricing

论文评审过程:Received 31 January 2008, Revised 8 September 2008, Accepted 29 December 2008, Available online 21 January 2009.

论文官网地址:https://doi.org/10.1016/j.dss.2008.12.012