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Hybrid Algorithms of Finding Features for Clustering Sequential DataChang, Hsi-mei 08 July 2010 (has links)
Proteins are
the structural components of living cells and tissues, and thus an
important building block in all living organisms. Patterns in
proteins sequences are some subsequences which appear frequently.
Patterns often denote important functional regions in proteins and
can be used to characterize a protein family or discover the
function of proteins. Moreover, it provides valuable information
about the evolution of species. Grouping protein sequences that
share similar structure helps in identifying sequences with similar
functionality. Many algorithms have been proposed for clustering
proteins according to their similarity, i.e., sequential
patterns in protein databases, for example, feature-based clustering
algorithms of the global approach and the local approach. They use
the algorithm of mining sequential patterns to solve the
no-gap-limit sequential pattern problem in a protein sequences
database, and then find global features and local features
separately for clustering. Feature-based clustering algorithms are
entirely different approaches to protein clustering that do not
require an all-against-all analysis and use a near-linear
complexity K-means based clustering algorithm. Although
feature-based clustering algorithms are scalable and lead to
reasonably good clusters, they consume time on performing the global
approach and the local approach separately. Therefore, in this
thesis, we propose hybrid algorithms to find and mark features for
feature-based clustering algorithms. We observe an interesting
result from the relation between the local features and the closed
frequent sequential patterns. The important observation which we
find is that some features in the closed frequent sequential
patterns can be taken apart to several features in the local
selected features and the total support number of these features in
the local selected features is equal to the support number of the
corresponding feature in the closed frequent sequential patterns.
There are two phases, find-feature and mark-feature, in the global
approach and the local approach after mining sequential patterns. In
our hybrid algorithms of Method 1 (LocalG), we first find and mark
the local features. Then, we find the global features. Finally, we
mark the bit vectors of the global features efficiently from the bit
vector of the local features. In our hybrid algorithms of Method 2
(CLoseLG), we first find the closed frequent sequential patterns
directly. Next, we find local candidate features efficiently from
the closed frequent sequential patterns and then mark the local
features. Finally, we find and mark the global features. From our
performance study based on the biological data and the synthetic
data, we show that our proposed hybrid algorithms are more efficient
than the feature-based algorithm.
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An Efficient Bit-Pattern-Based Algorithm for Mining Sequential Patterns in Protein DatabasesJeng, Yin-han 26 June 2009 (has links)
Proteins are the structural components of living cells and tissues, and thus an important building block in all living organisms. Patterns in proteins sequences are some subsequences which appear frequently. Patterns often denote important functional regions in proteins and can be used to characterize a protein family or discover the function of proteins. Moreover, it provides valuable information about the evolution of species. Patterns contain gaps of arbitrary size. Considering the no--gap--limit sequential pattern problem in a protein database, we may use the algorithm of mining sequential patterns to solve it. However, in a protein database, the order of segment appearing in protein sequences is important and it may
appear many times repeatedly in a protein sequence. Therefore, we can not directly use the traditional sequential pattern mining algorithms to mine them. Many algorithms have been proposed to mine sequential patterns in protein databases, for example, the SP-index algorithm. They enumerate patterns of limited sizes (segments) in the solution space and find all patterns. The SP-index algorithm is based on the traditional sequential pattern mining algorithms and considers the the problem of the multiple--appearances of segments in a protein sequence. Although the SP-index algorithm considers the characteristics of bioinformatics, it still contains a time--consuming step which constructs the SP-tree to find the
frequent patterns. In this step, it has to trace many nodes to get the result. Therefore, in this thesis, we propose a
Bit--Pattern--based (BP) algorithm to improve the
disadvantages of the SP-index algorithm. First, we transform the protein sequences into bit sequences. Second, we construct the frequent segments by using the AND operator. Because we use the bit operator, it is efficient to get the frequent segments. Then, we prune unnecessary frequent segments, which results in the case that we do not have to test many frequent segments in the following step. Third, we use the OR operator to get the longest pattern. In this step, we test whether two segments can be linked together to construct a long segment, and we get the result by testing once. Because we focus on which position the segment appears on, we can use the OR operator and then judge the bit sequences to get the
result. Thus, we can avoid many testing processes. From our performance study based on the biological data, we show that we can improve the efficiency of the SP-index algorithm. Moreover, from our simulation results, we show that our proposed algorithm can improve the processing time up to 50\% as compared to the SP-index algorithm, since the SP--index algorithm has to trace many nodes to
construct the longest pattern.
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