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This book presents recent advances in Knowledge discovery in
databases (KDD) with a focus on the areas of market basket
database, time-stamped databases and multiple related databases.
Various interesting and intelligent algorithms are reported on data
mining tasks. A large number of association measures are presented,
which play significant roles in decision support applications. This
book presents, discusses and contrasts new developments in mining
time-stamped data, time-based data analyses, the identification of
temporal patterns, the mining of multiple related databases, as
well as local patterns analysis.
Pattern recognition in data is a well known classical problem
that falls under the ambit of data analysis. As we need to handle
different data, the nature of patterns, their recognition and the
types of data analyses are bound to change. Since the number of
data collection channels increases in the recent time and becomes
more diversified, many real-world data mining tasks can easily
acquire multiple databases from various sources. In these cases,
data mining becomes more challenging for several essential reasons.
We may encounter sensitive data originating from different sources
- those cannot be amalgamated. Even if we are allowed to place
different data together, we are certainly not able to analyze them
when local identities of patterns are required to be retained.
Thus, pattern recognition in multiple databases gives rise to a
suite of new, challenging problems different from those encountered
before. Association rule mining, global pattern discovery and
mining patterns of select items provide different patterns
discovery techniques in multiple data sources. Some interesting
item-based data analyses are also covered in this book. Interesting
patterns, such as exceptional patterns, icebergs and periodic
patterns have been recently reported. The book presents a thorough
influence analysis between items in time-stamped databases. The
recent research on mining multiple related databases is covered
while some previous contributions to the area are highlighted and
contrasted with the most recent developments.
This book presents recent advances in Knowledge discovery in
databases (KDD) with a focus on the areas of market basket
database, time-stamped databases and multiple related databases.
Various interesting and intelligent algorithms are reported on data
mining tasks. A large number of association measures are presented,
which play significant roles in decision support applications. This
book presents, discusses and contrasts new developments in mining
time-stamped data, time-based data analyses, the identification of
temporal patterns, the mining of multiple related databases, as
well as local patterns analysis. Â
Pattern recognition in data is a well known classical problem that
falls under the ambit of data analysis. As we need to handle
different data, the nature of patterns, their recognition and the
types of data analyses are bound to change. Since the number of
data collection channels increases in the recent time and becomes
more diversified, many real-world data mining tasks can easily
acquire multiple databases from various sources. In these cases,
data mining becomes more challenging for several essential reasons.
We may encounter sensitive data originating from different sources
- those cannot be amalgamated. Even if we are allowed to place
different data together, we are certainly not able to analyze them
when local identities of patterns are required to be retained.
Thus, pattern recognition in multiple databases gives rise to a
suite of new, challenging problems different from those encountered
before. Association rule mining, global pattern discovery and
mining patterns of select items provide different patterns
discovery techniques in multiple data sources. Some interesting
item-based data analyses are also covered in this book. Interesting
patterns, such as exceptional patterns, icebergs and periodic
patterns have been recently reported. The book presents a thorough
influence analysis between items in time-stamped databases. The
recent research on mining multiple related databases is covered
while some previous contributions to the area are highlighted and
contrasted with the most recent developments.
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