Many previous approaches to frequent episode discovery only accept simple sequences. Although a recent approach has been able to nd frequent episodes from complex sequences, the discovered sets are neither condensed nor accurate. This paper investigates the discovery of condensed sets of frequent episodes from complex sequences. We adopt a novel anti-monotonic frequency measure based on non-redundant occurrences, and dene a condensed set, nDaCF (the set of non-derivable approximately closed frequent episodes) within a given maximal error bound of support. We then introduce a series of effective pruning strategies, and develop a method, nDaCF-Miner, for discovering nDaCF sets. Experimental results show that, when the error bound is somewhat ...
Frequent episode discovery is a popular framework for temporal pattern discovery in event streams. A...
The knowledge embedded in an online data stream is likely to change over time due to the dynamic evo...
Most pattern mining methods yield a large number of frequent patterns, and isolating a small relevan...
Researchers have been endeavoring to discover concise sets of episode rules instead of complete sets...
Frequent episode discovery framework is a popular framework in temporal data mining with many applic...
Frequent episode discovery is a popular framework for mining data available as a long sequence of ev...
Frequent episode discovery framework is a popular framework in temporal data mining with many applic...
Frequent episode discovery is a popular framework for pattern discovery from sequential data. It has...
Frequent episode discovery is a popular framework in temporal data mining with many applications. An...
Frequent episode discovery is introduced to mine useful and interesting temporal patterns from seque...
In this paper we consider the process of discovering frequent episodes in event sequences. The most ...
In this paper, we describe a method for mining both frequent episodes and rare episodes in multiple ...
The number of applications generating sequential data is exploding. This work studies the discoverin...
Abstract. In this paper, first we introduce a bipartite episode of the form A 7 → B for two sets A a...
Abstract. In this paper, first we introduce a bipartite episode of the form A 7 → B for two sets A a...
Frequent episode discovery is a popular framework for temporal pattern discovery in event streams. A...
The knowledge embedded in an online data stream is likely to change over time due to the dynamic evo...
Most pattern mining methods yield a large number of frequent patterns, and isolating a small relevan...
Researchers have been endeavoring to discover concise sets of episode rules instead of complete sets...
Frequent episode discovery framework is a popular framework in temporal data mining with many applic...
Frequent episode discovery is a popular framework for mining data available as a long sequence of ev...
Frequent episode discovery framework is a popular framework in temporal data mining with many applic...
Frequent episode discovery is a popular framework for pattern discovery from sequential data. It has...
Frequent episode discovery is a popular framework in temporal data mining with many applications. An...
Frequent episode discovery is introduced to mine useful and interesting temporal patterns from seque...
In this paper we consider the process of discovering frequent episodes in event sequences. The most ...
In this paper, we describe a method for mining both frequent episodes and rare episodes in multiple ...
The number of applications generating sequential data is exploding. This work studies the discoverin...
Abstract. In this paper, first we introduce a bipartite episode of the form A 7 → B for two sets A a...
Abstract. In this paper, first we introduce a bipartite episode of the form A 7 → B for two sets A a...
Frequent episode discovery is a popular framework for temporal pattern discovery in event streams. A...
The knowledge embedded in an online data stream is likely to change over time due to the dynamic evo...
Most pattern mining methods yield a large number of frequent patterns, and isolating a small relevan...