A probabilistic geocoding system utilising a parcel based address file
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Christen, Peter
Willmore, Alan
Churches, Tim
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Springer
Abstract
It is estimated that between 80% and 90% of governmental data collections contain address information, Geocoding - the process of assigning geographic coordinates to addresses - is becoming increasingly important in application areas that involve the analysis and mining of such data. In many cases, address records are captured and/or stored in a free-form or inconsistent manner. This fact complicates the task of accurately matching such addresses to spatially-annotated reference data. In this paper we describe a geocoding system that is based on a comprehensive high-quality geocoded national address database. It uses a learning address parser based on hidden Markov models to segment free-form addresses into components, and a rule-based matching engine to determine the best matches to the reference database.
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Lecture Notes in Computer Science (LNCS)
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2037-12-31
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