通过在线社区市场预测来预测新产品的成功

Kurt Matzler, Christoph Grabher, J. Huber, J. Fueller
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引用次数: 21

摘要

预测新产品的成功仍然是一项具有挑战性的任务。传统的市场研究工具昂贵、耗时且容易出错。预测市场作为一种可行的替代方案被引入。利用来自游戏类环境中不同参与者的输入,他们通过基于市场的聚合机制将分散的知识结合起来,从而产生准确的结果。虽然之前的研究大多以员工或专家为样本,但我们测试了在线消费者社区是否可以通过预测市场来预测新滑雪板的销售。62名用户参与了这项研究。预测市场在2010/2011滑雪季开始前开放了12天。预测市场的结果与滑雪板生产商提供的实际销售数字进行了比较。四个市场的平均误差在2.74%到9.09%之间。综上所述,基于消费者群体的预测市场产生了准确的结果。
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Predicting New Product Success with Prediction Markets in Online Communities
The prediction of new product success is still a challenging task. Traditional market research tools are expensive, time consuming, and error prone. Prediction markets have been introduced as a viable alternative. Utilizing inputs from various participants in game‐like environments, they have been shown to produce accurate results by combining dispersed knowledge via market‐based aggregation mechanisms. While most previous studies use employees or experts as a sample, we test whether online consumer communities can be used to predict the sale of new skis via prediction markets. Sixty‐two users took part in the study. The prediction market was open for 12 days before the main skiing season 2010/2011 began. The outcomes of the prediction markets were compared with the actual sales numbers provided by the ski producers. The mean average errors were between 2.74% and 9.09% in the four markets. Overall, it can be concluded that the prediction markets based on consumer communities produce accurate results.
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