Kelsey L. Bruso
Unisys
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Featured researches published by Kelsey L. Bruso.
Electronic Commerce Research and Applications | 2012
John V. Carlis; Kelsey L. Bruso
Clustering can be a valuable tool for analyzing large datasets, such as in e-commerce applications. Anyone who clusters must choose how many item clusters, K, to report. Unfortunately, one must guess at K or some related parameter. Elsewhere we introduced a strongly-supported heuristic, RSQRT, which predicts K as a function of the attribute or item count, depending on attribute scales. We conducted a second analysis where we sought confirmation of the heuristic, analyzing data sets from theUCImachine learning benchmark repository. For the 25 studies where sufficient detail was available, we again found strong support. Also, in a side-by-side comparison of 28 studies, RSQRT best-predicted K and the Bayesian information criterion (BIC) predicted K are the same. RSQRT has a lower cost of O(log log n) versus O(n(2)) for BIC, and is more widely applicable. Using RSQRT prospectively could be much better than merely guessing.
Archive | 2005
Kelsey L. Bruso; James M. Plasek; John C. Rust
Archive | 2010
Kelsey L. Bruso; Glen E. Newton
Archive | 2008
Kelsey L. Bruso; James M. Plasek
Archive | 1994
Kelsey L. Bruso; Robert Dean Vavra
Archive | 2006
Roger V. Ritchie; Kelsey L. Bruso; James M. Plasek
Archive | 2008
Kelsey L. Bruso; James M. Plasek
Archive | 2004
James M. Plasek; Kelsey L. Bruso
Archive | 2004
James M. Plasek; Michael S. Jende; Kelsey L. Bruso
Archive | 2013
Kelsey L. Bruso; Ronald G. Smith