Unsupervised record matching with noisy and incomplete dataTools van Gennip, Yves, Hunter, Blake, Ma, Anna, Moyer, Dan, de Vera, Ryan and Bertozzi, Andrea L. (2018) Unsupervised record matching with noisy and incomplete data. International Journal of Data Science and Analytics . ISSN 2364-415X Full text not available from this repository.AbstractWe consider the problem of duplicate detection in noisy and incomplete data: given a large data set in which each record has multiple entries (attributes), detect which distinct records refer to the same real world entity. This task is complicated by noise (such as misspellings) and missing data, which can lead to records being different, despite referring to the same entity. Our method consists of three main steps: creating a similarity score between records, grouping records together into "unique entities", and refining the groups. We compare various methods for creating similarity scores between noisy records, considering different combinations of string matching, term frequency-inverse document frequency methods, and n-gram techniques. In particular, we introduce a vectorized soft term frequency-inverse document frequency method, with an optional refinement step. We also discuss two methods to deal with missing data in computing similarity scores.
Actions (Archive Staff Only)
|