Abstract From a data mining perspective, sequence classification is to build a classifier using frequent sequential patterns. However, mining for a complete set of sequential patterns on a large dataset can be extremely time-consuming and the large number of patterns discovered also makes the pattern selection and classifier building very time-consuming. The fact is that, in sequence classification, it is much more important to discover discriminative patterns than a complete pattern set. In this paper, we propose a novel hierarchical algorithm to build sequential classifiers using discriminative sequential patterns. Firstly, we mine for the sequential patterns which are the most strongly correlated to each target class. In this step, an ag...
Sequential pattern analysis targets on finding statistically relevant temporal structures where the ...
Sequential pattern mining is an important and useful tool with broad applications, such as analyzing...
This chapter presents four applications of data mining in social security. The first is an applicati...
From a data mining perspective, sequence classification is to build a classifier using frequent sequ...
Debt detection is important for improving payment accuracy in social security. Since debt detection ...
Abstract- Sequential pattern mining is a very important mining technique with broad applications. It...
Abstract. Debt detection is important for improving payment accu-racy in social security. Since debt...
AND DUMITRU RĂDOIU Abstract. This paper presents a novel data mining technique, known as Post Sequen...
© 2015, Springer Science+Business Media New York. Data mining for client behavior analysis has becom...
Owing to important applications such as mining web page traversal sequences, many algorithms have be...
Mining sequential patterns from large customer transaction databases has been recognized as a key re...
In sequential pattern mining, the support of the sequential pattern for the transaction database is ...
The explosion of big data has affected the operation of every type of organization. Each organizatio...
Frequent Pattern mining is modified by Sequential Pattern Mining to consider time regularity which i...
Sequential pattern mining is a practical problem whose objective is to discover helpful informative ...
Sequential pattern analysis targets on finding statistically relevant temporal structures where the ...
Sequential pattern mining is an important and useful tool with broad applications, such as analyzing...
This chapter presents four applications of data mining in social security. The first is an applicati...
From a data mining perspective, sequence classification is to build a classifier using frequent sequ...
Debt detection is important for improving payment accuracy in social security. Since debt detection ...
Abstract- Sequential pattern mining is a very important mining technique with broad applications. It...
Abstract. Debt detection is important for improving payment accu-racy in social security. Since debt...
AND DUMITRU RĂDOIU Abstract. This paper presents a novel data mining technique, known as Post Sequen...
© 2015, Springer Science+Business Media New York. Data mining for client behavior analysis has becom...
Owing to important applications such as mining web page traversal sequences, many algorithms have be...
Mining sequential patterns from large customer transaction databases has been recognized as a key re...
In sequential pattern mining, the support of the sequential pattern for the transaction database is ...
The explosion of big data has affected the operation of every type of organization. Each organizatio...
Frequent Pattern mining is modified by Sequential Pattern Mining to consider time regularity which i...
Sequential pattern mining is a practical problem whose objective is to discover helpful informative ...
Sequential pattern analysis targets on finding statistically relevant temporal structures where the ...
Sequential pattern mining is an important and useful tool with broad applications, such as analyzing...
This chapter presents four applications of data mining in social security. The first is an applicati...