Sequence Data MiningSpringer Science & Business Media, 2007 M10 31 - 150 pages Understanding sequence data, and the ability to utilize this hidden knowledge, will create a significant impact on many aspects of our society. Examples of sequence data include DNA, protein, customer purchase history, web surfing history, and more. This book provides thorough coverage of the existing results on sequence data mining as well as pattern types and associated pattern mining methods. It offers balanced coverage on data mining and sequence data analysis, allowing readers to access the state-of-the-art results in one place. |
From inside the book
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... sequence data has its own unique characteristics and importance, and claims many interesting applications. From customer shopping transactions, to global climate change, from web click streams to biological DNA sequences, the sequence ...
... sequence data has its own unique characteristics and importance, and claims many interesting applications. From customer shopping transactions, to global climate change, from web click streams to biological DNA sequences, the sequence ...
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... biological data, with over 300 journal and conference publications. He has chaired or served on over 100 program committees of international conferences and workshops, including PC co-chair of 2005 (IEEE) International Conference on ...
... biological data, with over 300 journal and conference publications. He has chaired or served on over 100 program committees of international conferences and workshops, including PC co-chair of 2005 (IEEE) International Conference on ...
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... sequence. If you have investment in companies, you are keen to study the history of those companies' stocks. Deep in your life, you rely on biological sequences including DNA and RNA sequences. Understanding sequence data is of grand ...
... sequence. If you have investment in companies, you are keen to study the history of those companies' stocks. Deep in your life, you rely on biological sequences including DNA and RNA sequences. Understanding sequence data is of grand ...
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... Sequence Patterns . . . . . . . . . . . . . . . . . . . . . . . . . . 113 6.1 Categories of Distinguishing Sequence Patterns . . . . . . . . . . . . . . 113 6.2 ... Biological Sequence Databases and Biological Data Analysis Resources ...
... Sequence Patterns . . . . . . . . . . . . . . . . . . . . . . . . . . 113 6.1 Categories of Distinguishing Sequence Patterns . . . . . . . . . . . . . . 113 6.2 ... Biological Sequence Databases and Biological Data Analysis Resources ...
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... sequence data have been and continue to be collected in genomic and medical studies, in security applications, in business applications, etc. In ... Biological Sequences: DNA, RNA and. Introduction Examples and Applications of Sequence Data.
... sequence data have been and continue to be collected in genomic and medical studies, in security applications, in business applications, etc. In ... Biological Sequences: DNA, RNA and. Introduction Examples and Applications of Sequence Data.
Contents
1 | |
Frequent and Closed Sequence Patterns | 14 |
Classification Clustering Features and Distances of Sequence Data | 47 |
Identifying and Characterizing Sequence Families | 67 |
Mining Partial Orders from Sequences | 88 |
Distinguishing Sequence Patterns | 113 |
Related Topics | 131 |
References | 139 |
Index | 147 |
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Common terms and phrases
algorithm alignment analysis appear applications approach biological bitset called candidate chapter classification closed partial orders closed sequential patterns clustering complete compute condition considered constraint construction contains count dataset defined Definition described determine discussed distance edges efficient element event example exists expression extension families Figure frequent closed partial function gap constraint given graph identify important interest length Markov match matrix methods minimization Moreover motif node occurrence pairs periodic position possible prefix PrefixSpan present probability problem projected database protein pruning quences Reference represented respect satisfying scan sequence database sequential pattern mining sequential patterns shown similarity step string structure studied subsequence subset Table task techniques threshold transaction transitive reduction tree types weight window
Popular passages
Page 144 - J. Pei, J. Han, B. Mortazavi-Asl, H. Pinto, Q. Chen, U. Dayal, and M.-C. Hsu. PrefixSpan: Mining sequential patterns efficiently by prefix-projected pattern growth.
Page 65 - K'(G) of a graph G is the minimum number of edges whose removal from G results in a disconnected graph or a trivial graph.
Page 139 - A. Bateman, E. Birney, L. Cerruti, R. Durbin, L. Etwiller, SR Eddy, S. GriffithsJones, KL Howe, M. Marshall, and ELL Sonnhammer. The Pfam protein families database.
Page 144 - Nucleotide sequence of an RNA polymerase binding site at an early T7 promoter, Proc.
Page 25 - Table 2. 4. The set of sequential patterns is the collection of patterns found in the above recursive mining process. One can verify that it returns exactly the same set of sequential patterns as what GSP and FreeSpan do.
Page 16 - That is, element (x) is written as x. An item can occur at most once in an element of a sequence, but can occur multiple times in different elements of a sequence. The number of instances of items in a sequence is called the length of the sequence. A sequence with length / is called an /-sequence. A sequence a...