[[abstract]]In knowledge discovery, data mining of time series data has many important applications. Especially, sequential patterns and periodic patterns, which evolved from the association rule, have been applied in many useful practices. This paper presents another useful concept, the periodic clustering sequential (PCS) pattern, which uses clustering to mine valuable information from temporal or serially ordered data in a period of time. For example, one can cluster patients according to symptoms of the illness under study, but this may just result in several clusters with specific symptoms for analyzing the distribution of patients. Adding time series analysis to the above investigation, we can examine the distribution of patients over...
Numerous methods can identify patterns exhibiting a periodic behavior. Nonetheless, a problem of the...
[[abstract]]Sequential pattern mining is a data mining method for obtaining frequent sequential patt...
The amount and complexity of sequential data collected across various domains have grown rapidly, po...
Sequential pattern mining approaches mainly deal with finding the positive behaviour of a sequential...
Periodic pattern detection in time-ordered sequences is an important data mining task, which discove...
Discovering associations is one of the fundamental tasks of data mining. Its aim is to automatically...
Temporal Data Mining is a rapidly evolving and new area of research that is at the intersection of s...
An important goal of knowledge discovery is the search for patterns in the data that can help explai...
Clustering real-world data is a challenging task, since many real-data collections are characterized...
The mining of periodic patterns in time series databases is an interesting data mining problem that...
Data collecting and analysis are commonly used techniques in many sectors of today's business and sc...
Temporal Data Mining is a rapidly evolving area of research that is at the intersection of several d...
Frequent Sequence Mining (FSM) is a fundamental task in data mining. Although FSM algorithms extract...
Data mining uses algorithms to extract knowledge from a large and complex data set. Due to the large...
Owing to a large number of applications periodic pattern mining has been extensively studied for ove...
Numerous methods can identify patterns exhibiting a periodic behavior. Nonetheless, a problem of the...
[[abstract]]Sequential pattern mining is a data mining method for obtaining frequent sequential patt...
The amount and complexity of sequential data collected across various domains have grown rapidly, po...
Sequential pattern mining approaches mainly deal with finding the positive behaviour of a sequential...
Periodic pattern detection in time-ordered sequences is an important data mining task, which discove...
Discovering associations is one of the fundamental tasks of data mining. Its aim is to automatically...
Temporal Data Mining is a rapidly evolving and new area of research that is at the intersection of s...
An important goal of knowledge discovery is the search for patterns in the data that can help explai...
Clustering real-world data is a challenging task, since many real-data collections are characterized...
The mining of periodic patterns in time series databases is an interesting data mining problem that...
Data collecting and analysis are commonly used techniques in many sectors of today's business and sc...
Temporal Data Mining is a rapidly evolving area of research that is at the intersection of several d...
Frequent Sequence Mining (FSM) is a fundamental task in data mining. Although FSM algorithms extract...
Data mining uses algorithms to extract knowledge from a large and complex data set. Due to the large...
Owing to a large number of applications periodic pattern mining has been extensively studied for ove...
Numerous methods can identify patterns exhibiting a periodic behavior. Nonetheless, a problem of the...
[[abstract]]Sequential pattern mining is a data mining method for obtaining frequent sequential patt...
The amount and complexity of sequential data collected across various domains have grown rapidly, po...