International audienceDatabases available from many industrial or research fields are often imperfect. In particular, they are most of the time incomplete in the sense that some of the values are missing. When facing this kind of imperfect data, two techniques can be investigated: either using only the available information or estimating the missing values. In this paper we propose an estimation-based approach for sequence mining. This approach considers partial inclusion of an item within a record using fuzzy sets. Experiments run on various synthetic datasets show the feasibility and validity of our proposal as well in terms of quality as in terms of the robustness to the rate of missing values
Data uncertainty is inherent in many real-world applications such as environmental surveillance and ...
AbstractAn essential component in Machine Learning processes is to estimate any uncertainty measure ...
We propose an adaptation of fuzzy rough sets to model concepts in datasets with missing values. Uppe...
International audienceRecent widening of data mining application areas have lead to new issues. For ...
Recent widening of data mining application areas have lead to new issues. For instance, frequent se...
International audienceThe discovery of unexpected behaviors in databases is an interesting problem f...
International audienceSequential pattern mining is the method that has received much attention in se...
The large amount of data stored in any areas as well as the diversity of their format and origin mak...
[[abstract]]Many methods have been proposed for mining fuzzy sequential patterns. However, most of c...
International audienceMost real world databases consist of historical and numerical data such as sen...
© 2014 Dr. Yuxuan LiSequential pattern mining is a branch of data mining task that aims at modeling ...
Recent studies in discovering patterns from sequence data have shown the significant impact in many ...
Real word data sets often contain many missing elements. Most algorithms that automatically develop ...
With the increase of data, data mining has been introduced to solve the overloading problem and to d...
In this paper a technique is proposed to tolerate missing values based on a system of fuzzy rules fo...
Data uncertainty is inherent in many real-world applications such as environmental surveillance and ...
AbstractAn essential component in Machine Learning processes is to estimate any uncertainty measure ...
We propose an adaptation of fuzzy rough sets to model concepts in datasets with missing values. Uppe...
International audienceRecent widening of data mining application areas have lead to new issues. For ...
Recent widening of data mining application areas have lead to new issues. For instance, frequent se...
International audienceThe discovery of unexpected behaviors in databases is an interesting problem f...
International audienceSequential pattern mining is the method that has received much attention in se...
The large amount of data stored in any areas as well as the diversity of their format and origin mak...
[[abstract]]Many methods have been proposed for mining fuzzy sequential patterns. However, most of c...
International audienceMost real world databases consist of historical and numerical data such as sen...
© 2014 Dr. Yuxuan LiSequential pattern mining is a branch of data mining task that aims at modeling ...
Recent studies in discovering patterns from sequence data have shown the significant impact in many ...
Real word data sets often contain many missing elements. Most algorithms that automatically develop ...
With the increase of data, data mining has been introduced to solve the overloading problem and to d...
In this paper a technique is proposed to tolerate missing values based on a system of fuzzy rules fo...
Data uncertainty is inherent in many real-world applications such as environmental surveillance and ...
AbstractAn essential component in Machine Learning processes is to estimate any uncertainty measure ...
We propose an adaptation of fuzzy rough sets to model concepts in datasets with missing values. Uppe...