An Efficient Tree-based Frequent Temporal Inter-object Pattern Mining Approach in Time Series Databases
In order to make the most of time series present in many various 
application domains such as finance, medicine, geology, meteorology, 
etc., mining time series is performed for useful information and hidden 
knowledge. Discovered knowledge is very significant to help users such 
as data analysts and managers get fascinating insights into important 
temporal relationships of objects/phenomena along time. Unfortunately, 
two main challenges exist with frequent pattern mining in time series 
databases. The first challenge is the combinatorial explosion of too 
many possible combinations for frequent patterns with their detailed 
descriptions, and the second one is to determine frequent patterns truly
 meaningful and relevant to the users. In this paper, we propose a 
tree-based frequent temporal inter-object pattern mining algorithm to 
cope with these two challenges in a level-wise bottom-up approach. In 
comparison with the existing works, our proposed algorithm is more 
effective and efficient for frequent temporal inter-object patterns 
which are more informative with explicit and exact temporal information 
automatically discovered from a time series database. As shown in the 
experiments on real financial time series, our work has reduced many 
invalid combinations for frequent patterns http://repository.vnu.edu.vn/handle/VNU_123/958 and also avoided many 
irrelevant frequent patterns returned to the users. .
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