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Artificial Prediction Markets for Clustering

机译:聚类的人工预测市场

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There exist a lot of clustering algorithms for different purposes. But there is no general algorithm that can work without considering the context. This means clustering is not an application independent problem. So there is a need for more flexible frameworks to engineer new clustering algorithms for the problems at hand. One way to do this is by combining clustering algorithms. This is also called consensus or ensemble clustering in the literature. This paper presents a framework based on prediction markets mechanism for online clustering by combining different clustering algorithms. In real world, prediction markets are used to aggregate wisdom of the crowd for predicting outcome of events such as presidential election. By using the prediction markets mechanism and considering clustering algorithms as agents or market participants, an artificial prediction market is designed. Here clustering is viewed as a prediction problem. Beside working online, the proposed method provides flexibility in combining algorithms and also helps in tracking their performance in the market. Based on this framework an algorithm for center-based clustering algorithms (like k-means) is proposed. The first set of experiments show the flexibility of the algorithm on synthetic datasets. The results from the second set of experiments show that the algorithm also works well on real-world datasets.
机译:存在许多用于不同目的的聚类算法。但是,没有考虑上下文的​​通用算法是行不通的。这意味着群集不是与应用程序无关的问题。因此,需要更灵活的框架来设计新的聚类算法以解决当前的问题。一种实现方法是组合聚类算法。在文献中,这也称为共识或整体聚类。通过结合不同的聚类算法,提出了一种基于预测市场机制的在线聚类框架。在现实世界中,预测市场用于聚集人群的智慧,以预测总统选举等事件的结果。通过使用预测市场机制并考虑将聚类算法用作代理或市场参与者,设计了一个人工预测市场。在这里,聚类被视为一个预测问题。除了在线工作外,该方法还提供了组合算法的灵活性,还有助于跟踪其在市场上的表现。在此框架的基础上,提出了一种基于中心的聚类算法(如k-means)的算法。第一组实验显示了该算法在合成数据集上的灵活性。第二组实验的结果表明,该算法在现实世界的数据集上也能很好地工作。

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