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Index-driven similarity search in metric spaces
- ACM Transactions on Database Systems
, 2003
"... Similarity search is a very important operation in multimedia databases and other database applications involving complex objects, and involves finding objects in a data set S similar to a query object q, based on some similarity measure. In this article, we focus on methods for similarity search th ..."
Abstract
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Cited by 118 (6 self)
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Similarity search is a very important operation in multimedia databases and other database applications involving complex objects, and involves finding objects in a data set S similar to a query object q, based on some similarity measure. In this article, we focus on methods for similarity search that make the general assumption that similarity is represented with a distance metric d. Existing methods for handling similarity search in this setting typically fall into one of two classes. The first directly indexes the objects based on distances (distance-based indexing), while the second is based on mapping to a vector space (mapping-based approach). The main part of this article is dedicated to a survey of distance-based indexing methods, but we also briefly outline how search occurs in mapping-based methods. We also present a general framework for performing search based on distances, and present algorithms for common types of queries that operate on an arbitrary “search hierarchy. ” These algorithms can be applied on each of the methods presented, provided a suitable search hierarchy is defined.
EUNITE Network Competition: Electricity Load Forecasting
- National Taiwan University
, 2001
"... EUNITE network recently organized a world-wide competition on electricity load forecasting. This paper details our approaches and results where the main machine learning technique used is support vector machine. ..."
Abstract
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Cited by 4 (0 self)
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EUNITE network recently organized a world-wide competition on electricity load forecasting. This paper details our approaches and results where the main machine learning technique used is support vector machine.

