A large volume of research in temporal data mining is focusing on discovering temporal rules from time-stamped data. The majority of the methods proposed so far have been mainly devoted to the mining of temporal rules which describe relationships between data sequences or instantaneous events and do not consider the presence of complex temporal patterns into the dataset. Such complex patterns, such as trends or up and down behaviors, are often very interesting for the users. In this paper we propose a new kind of temporal association rule and the related extraction algorithm; the learned rules involve complex temporal patterns in both their antecedent and consequent. Within our proposed approach, the user defines a set of complex patterns ...
The domain of temporal data mining focuses on the discovery of causal relationships among events tha...
The domain of temporal data mining focuses on the discovery of causal relationships among events tha...
The domain of temporal data mining focuses on the discovery of causal relationships among events tha...
A large volume of research in temporal data mining is focusing on discovering temporal rules from t...
A large volume of research in temporal data mining is focusing on discovering temporal rules from ti...
This thesis focuses on mining association rules on multivariate time series. Com-mon association rul...
This thesis focuses on mining association rules on multivariate time series. Com-mon association rul...
Extracting rules from temporal series is a well-established temporal data mining technique. The curr...
An important goal of knowledge discovery is the search for patterns in data that can help explain th...
Data mining is the process of discovering and examining data from diverse viewpoint, using automatic...
In this work an approach is presented which applies unsupervised symbolic learning to a qualitative ...
In this work an approach is presented which applies unsupervised symbolic learning to a qualitative ...
Temporal association rules have been recently applied to interval-based temporal clinical data, to d...
Association rule mining from time series has attracted considerable interest over the last years and...
Analyzing data for support of diagnostic tasks in dynamic domains, such as medicine, plant pathology...
The domain of temporal data mining focuses on the discovery of causal relationships among events tha...
The domain of temporal data mining focuses on the discovery of causal relationships among events tha...
The domain of temporal data mining focuses on the discovery of causal relationships among events tha...
A large volume of research in temporal data mining is focusing on discovering temporal rules from t...
A large volume of research in temporal data mining is focusing on discovering temporal rules from ti...
This thesis focuses on mining association rules on multivariate time series. Com-mon association rul...
This thesis focuses on mining association rules on multivariate time series. Com-mon association rul...
Extracting rules from temporal series is a well-established temporal data mining technique. The curr...
An important goal of knowledge discovery is the search for patterns in data that can help explain th...
Data mining is the process of discovering and examining data from diverse viewpoint, using automatic...
In this work an approach is presented which applies unsupervised symbolic learning to a qualitative ...
In this work an approach is presented which applies unsupervised symbolic learning to a qualitative ...
Temporal association rules have been recently applied to interval-based temporal clinical data, to d...
Association rule mining from time series has attracted considerable interest over the last years and...
Analyzing data for support of diagnostic tasks in dynamic domains, such as medicine, plant pathology...
The domain of temporal data mining focuses on the discovery of causal relationships among events tha...
The domain of temporal data mining focuses on the discovery of causal relationships among events tha...
The domain of temporal data mining focuses on the discovery of causal relationships among events tha...