Recent widening of data mining application areas have lead to new issues. For instance, frequent sequence discovery techniques that were developed for customer behaviour analysis are now applied to analyse industrial or biological databases. Thus frequent sequence mining algorithm must be adapted to handle particular characteristics of these data. Among these specificities one should consider numerical attributes and incomplete data. In this paper, we propose a method for discovering crisp or fuzzy sequential patterns from an incomplete database. This approach uses partial information contained in incomplete records, only temporary discarding the missing part of the record. Experiments run on various synthetic datasets show the val...
[[abstract]]Mining sequential patterns from temporal transaction databases attempts to find customer...
Abstract Mining frequent patterns with periodic wildcard gaps is a critical data mining problem to d...
Knowledge discovery and datamining (KDD) is commonly defined as the nontrivial process of finding in...
International audienceRecent widening of data mining application areas have lead to new issues. For ...
International audienceDatabases available from many industrial or research fields are often imperfec...
International audienceMost real world databases consist of historical and numerical data such as sen...
[[abstract]]Many methods have been proposed for mining fuzzy sequential patterns. However, most of c...
The large amount of data stored in any areas as well as the diversity of their format and origin mak...
With the increase of data, data mining has been introduced to solve the overloading problem and to d...
Fuzzy sequential pattern mining is a rel-evant approach when dealing with tem-porally annotated nume...
[[abstract]]The task of sequential pattern mining is to discover the complete set of sequential patt...
Recent studies in discovering patterns from sequence data have shown the significant impact in many ...
International audienceFuzzy sequential pattern mining is a relevant approach when dealing with tempo...
International audienceThe discovery of unexpected behaviors in databases is an interesting problem f...
Abstract. Discovery of sequential patterns is an important data mining problem with numerous applica...
[[abstract]]Mining sequential patterns from temporal transaction databases attempts to find customer...
Abstract Mining frequent patterns with periodic wildcard gaps is a critical data mining problem to d...
Knowledge discovery and datamining (KDD) is commonly defined as the nontrivial process of finding in...
International audienceRecent widening of data mining application areas have lead to new issues. For ...
International audienceDatabases available from many industrial or research fields are often imperfec...
International audienceMost real world databases consist of historical and numerical data such as sen...
[[abstract]]Many methods have been proposed for mining fuzzy sequential patterns. However, most of c...
The large amount of data stored in any areas as well as the diversity of their format and origin mak...
With the increase of data, data mining has been introduced to solve the overloading problem and to d...
Fuzzy sequential pattern mining is a rel-evant approach when dealing with tem-porally annotated nume...
[[abstract]]The task of sequential pattern mining is to discover the complete set of sequential patt...
Recent studies in discovering patterns from sequence data have shown the significant impact in many ...
International audienceFuzzy sequential pattern mining is a relevant approach when dealing with tempo...
International audienceThe discovery of unexpected behaviors in databases is an interesting problem f...
Abstract. Discovery of sequential patterns is an important data mining problem with numerous applica...
[[abstract]]Mining sequential patterns from temporal transaction databases attempts to find customer...
Abstract Mining frequent patterns with periodic wildcard gaps is a critical data mining problem to d...
Knowledge discovery and datamining (KDD) is commonly defined as the nontrivial process of finding in...