Clustering with a Reject Option: Interactive Clustering as Bayesian Prior Elicitation
Srivastava, Akash, Zou, James, Adams, Ryan P., Sutton, Charles
A good clustering can help a data analyst to explore and understand a data set, but what constitutes a good clustering may depend on domain-specific and application-specific criteria. These criteria can be difficult to formalize, even when it is easy for an analyst to know a good clustering when they see one. We present a new approach to interactive clustering for data exploration called TINDER, based on a particularly simple feedback mechanism, in which an analyst can reject a given clustering and request a new one, which is chosen to be different from the previous clustering while fitting the data well. We formalize this interaction in a Bayesian framework as a method for prior elicitation, in which each different clustering is produced by a prior distribution that is modified to discourage previously rejected clusterings. We show that TINDER successfully produces a diverse set of clusterings, each of equivalent quality, that are much more diverse than would be obtained by randomized restarts.
Jun-19-2016
- Country:
- North America > United States > Massachusetts (0.14)
- Genre:
- Research Report (0.64)
- Industry:
- Information Technology > Services (0.30)
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