Article Details

Discovery Time – Series Data Using Time Intervals Clustering in Traffic Control System | Original Article

Sitesh Kumar Sinha*, Rajiv Saxena, in Anusandhan | Technology & Management

ABSTRACT:

This is proposed research on sequence mining of transactional data. However, there are many applications where it is important to find significant intervals in which some events occur with specified strength. We study approaches to convert point-based data into intervals, thereby predicting the next occurrence of the event.. We compare the performances of various approaches in terms of computation time, number of passes. Coverage and interval statistics like density, interval-length and interval-confidence. We propose an approach to clustering using the significant intervals produced. Furthermore, we use these intervals, which serve as representative areas of the dataset as input to a Hybrid A-priori algorithm to mine for sequential patterns. We present the two types of interval semantics that can be used with sequential mining. We formulate Hybrid .4-priori sequential algorithm that accepts intervals as input. Finally, we summarize the results and use these results in traffic control system.