Detailed Information on Publication Record
2007
Similarity Search: The Metric Space Approach
ZEZULA, Pavel, Giuseppe AMATO and Vlastislav DOHNALBasic information
Original name
Similarity Search: The Metric Space Approach
Name in Czech
Podobnostní hledání: Pohled metrického prostoru
Authors
ZEZULA, Pavel (203 Czech Republic, guarantor), Giuseppe AMATO (380 Italy) and Vlastislav DOHNAL (203 Czech Republic)
Edition
2007. vyd. Seoul, Korea, ACM SAC 2007 Conference, 2007
Publisher
ACM
Other information
Language
English
Type of outcome
Audiovizuální tvorba
Field of Study
10201 Computer sciences, information science, bioinformatics
Country of publisher
Czech Republic
Confidentiality degree
není předmětem státního či obchodního tajemství
References:
RIV identification code
RIV/00216224:14330/07:00019397
Organization unit
Faculty of Informatics
ISBN
1-59593-480-4
Keywords in English
similarity search; approximate search; metric space; index structures; distributed index structure; scalability
Tags
Tags
International impact
Změněno: 23/6/2009 12:52, doc. RNDr. Vlastislav Dohnal, Ph.D.
V originále
Similarity searching has become afundamental computational task in a variety of application areas, including multimedia information retrieval, data mining, pattern recognition, machine learning, computer vision, biomedical databases, data compression and statistical data analysis. In such environments, an exact match has little meaning, and proximity/distance (similarity/dissimilarity) concepts are typically much more fruitful for searching. In this tutorial, we review the state of the art in developing similarity search mechanisms that accept the metric space paradigm. We explain the high extensibility of the metric space approach and demonstrate its capability with examples of distance functions. The efforts to further speed up retrieval are demonstrated by a class of approximated techniques and the very recent proposals of scalable and distributed structures based on the P2P communication paradigm.
In Czech
Similarity searching has become afundamental computational task in a variety of application areas, including multimedia information retrieval, data mining, pattern recognition, machine learning, computer vision, biomedical databases, data compression and statistical data analysis. In such environments, an exact match has little meaning, and proximity/distance (similarity/dissimilarity) concepts are typically much more fruitful for searching. In this tutorial, we review the state of the art in developing similarity search mechanisms that accept the metric space paradigm. We explain the high extensibility of the metric space approach and demonstrate its capability with examples of distance functions. The efforts to further speed up retrieval are demonstrated by a class of approximated techniques and the very recent proposals of scalable and distributed structures based on the P2P communication paradigm.
Links
GP201/07/P240, research and development project |
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1ET100300419, research and development project |
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