The Time Series Data Mining (TSDM) is an active research field due to the massive demands from industrial and other real-world practices. This thesis develops a novel universal TSDM methodology, named the Event Group Based Classifier (EGBC) framework, for multi-variate time series classification. This work was initially motivated by demands from the iron-making industry, and later extended as a generic TSDM technique. The unique feature of the proposed EGBC framework is its three-layer structure, of which each layer works independently and focuses on solving different problems within the TSDM domain. The EGBC framework has been examined and evaluated with different tasks, and the outcomes of which suggested this method has a satisfactory pe...
The beginning of the age of artificial intelligence and machine learning has created new challenges ...
An important usage of time sequences is for discovering temporal patterns of events (a special type ...
Supervised classification is one of the most active areas of machine learning research. Most work ha...
A new framework for analyzing time series data called Time Series Data Mining (TSDM) is introduced. ...
A new framework for analyzing time series data called Time Series Data Mining (TSDM) is introduced. ...
Decision tree algorithms were not traditionally considered for sequential data classification, mostl...
Abstract. The novel Time Series Data Mining (TSDM) framework is applied to analyzing financial time ...
The increase in the number of complex temporal datasets collected today\ud has prompted the developm...
Time series represent sequences of data points where usually their order is defined by the time when...
The increasing capability to collect data gives us the possibility to collect a massive amount of he...
In this thesis, a highly comparative framework for time-series analysis is developed. The approach d...
In the present-day, sensor data and textual logs are generated by many devices. Analysing these time...
Improving the performance of classifiers using pattern mining techniques has been an active topic of...
The challenges related to current energy market force gas turbine owners to improve the reliability ...
The amount and complexity of sequential data collected across various domains have grown rapidly, po...
The beginning of the age of artificial intelligence and machine learning has created new challenges ...
An important usage of time sequences is for discovering temporal patterns of events (a special type ...
Supervised classification is one of the most active areas of machine learning research. Most work ha...
A new framework for analyzing time series data called Time Series Data Mining (TSDM) is introduced. ...
A new framework for analyzing time series data called Time Series Data Mining (TSDM) is introduced. ...
Decision tree algorithms were not traditionally considered for sequential data classification, mostl...
Abstract. The novel Time Series Data Mining (TSDM) framework is applied to analyzing financial time ...
The increase in the number of complex temporal datasets collected today\ud has prompted the developm...
Time series represent sequences of data points where usually their order is defined by the time when...
The increasing capability to collect data gives us the possibility to collect a massive amount of he...
In this thesis, a highly comparative framework for time-series analysis is developed. The approach d...
In the present-day, sensor data and textual logs are generated by many devices. Analysing these time...
Improving the performance of classifiers using pattern mining techniques has been an active topic of...
The challenges related to current energy market force gas turbine owners to improve the reliability ...
The amount and complexity of sequential data collected across various domains have grown rapidly, po...
The beginning of the age of artificial intelligence and machine learning has created new challenges ...
An important usage of time sequences is for discovering temporal patterns of events (a special type ...
Supervised classification is one of the most active areas of machine learning research. Most work ha...