Clustering real-world data is a challenging task, since many real-data collections are characterized by an inherent sparseness and variable distribution. An appealing domain that generates such data collections is the medical care scenario where collected data include a large cardinality of patient records and a variety of medical treatments usually adopted for a given disease pathology. This paper proposes a two-phase data mining methodology to iteratively analyze dierent dataset portions and locally identify groups of objects with common properties. Discovered cohesive clusters are then analyzed using sequential patterns to characterize temporal relationships among data features. To support an automatic classication of a new data obje...
Research on the problem of clustering tends to be fragmented across the pattern recognition, databas...
The precious information is embedded in large databases. To extract them has become an interesting a...
The paper deals with clustering methods that can be used for detecting spatial and temporal patterns...
Clustering real-world data is a challenging task, since many real-data collections are characterized...
Abstract—Since in health care systems the amount of data is continuously growing, data mining techni...
Health care data collections are usually characterized by an inherent sparseness due to a large card...
There are large quantities of information about patients and their medical conditions. The discovery...
The huge amounts of data generated by media sensors in health monitoring systems, by medical diagnos...
Medical data is often presented as free text in the form of medical reports. Such documents contain ...
The accumulating amounts of data are making traditional analysis methods impractical. Novel tools em...
Healthcare service centres equipped with electronic health systems have improved their resources as ...
Clustering helps users gain insights from their data by discovering hidden structures in an unsuperv...
Objectives: the aim of this study was to identify, with soft clustering methods, multimorbidity patt...
The analysis of medical data is a challenging task for health care systems since a huge amount of in...
This dissertation focuses on solving problems for service systems improvement using newly developed ...
Research on the problem of clustering tends to be fragmented across the pattern recognition, databas...
The precious information is embedded in large databases. To extract them has become an interesting a...
The paper deals with clustering methods that can be used for detecting spatial and temporal patterns...
Clustering real-world data is a challenging task, since many real-data collections are characterized...
Abstract—Since in health care systems the amount of data is continuously growing, data mining techni...
Health care data collections are usually characterized by an inherent sparseness due to a large card...
There are large quantities of information about patients and their medical conditions. The discovery...
The huge amounts of data generated by media sensors in health monitoring systems, by medical diagnos...
Medical data is often presented as free text in the form of medical reports. Such documents contain ...
The accumulating amounts of data are making traditional analysis methods impractical. Novel tools em...
Healthcare service centres equipped with electronic health systems have improved their resources as ...
Clustering helps users gain insights from their data by discovering hidden structures in an unsuperv...
Objectives: the aim of this study was to identify, with soft clustering methods, multimorbidity patt...
The analysis of medical data is a challenging task for health care systems since a huge amount of in...
This dissertation focuses on solving problems for service systems improvement using newly developed ...
Research on the problem of clustering tends to be fragmented across the pattern recognition, databas...
The precious information is embedded in large databases. To extract them has become an interesting a...
The paper deals with clustering methods that can be used for detecting spatial and temporal patterns...