This article examines several data mining approaches that perform short time series analysis. The basis of the methods is formed by clustering algorithms with or without modifications. The proposed methods implement short time series analysis when the numbers of the observations are not equal and the historical information is short. The inspected approaches are offered for solving complex tasks where statistical analysis methods cannot be applied or their functioning does not provide the necessary efficiency. The proposed methods are based on grid-based clustering and k means algorithm modifications
Data Mining (DM) methods are being increasingly used in prediction with time series data, in additio...
Data mining refers to the extraction of knowledge by analyzing the data from different perspectives ...
Time series represent sequences of data points where usually their order is defined by the time when...
Temporal Data Mining is a rapidly evolving area of research that is at the intersection of several d...
Time series is one of the forms of data presentation that is used in many studies. It is convenient,...
Temporal Data Mining is a rapidly evolving and new area of research that is at the intersection of s...
The beginning of the age of artificial intelligence and machine learning has created new challenges ...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
Adaptive and innovative application of classical data mining principles and techniques in time serie...
Time series clustering has been an important research field in the last decade, providing useful and...
The focus of this thesis is on the classification methods of time series, including clustering and d...
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. ...
Time series data mining is one of the most studied and researched areas. This need in mining time se...
Demand for forecasting has increased significantly due to the rapid changes in technology, social ch...
Data Mining (DM) methods are being increasingly used in prediction with time series data, in additio...
Data mining refers to the extraction of knowledge by analyzing the data from different perspectives ...
Time series represent sequences of data points where usually their order is defined by the time when...
Temporal Data Mining is a rapidly evolving area of research that is at the intersection of several d...
Time series is one of the forms of data presentation that is used in many studies. It is convenient,...
Temporal Data Mining is a rapidly evolving and new area of research that is at the intersection of s...
The beginning of the age of artificial intelligence and machine learning has created new challenges ...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
Adaptive and innovative application of classical data mining principles and techniques in time serie...
Time series clustering has been an important research field in the last decade, providing useful and...
The focus of this thesis is on the classification methods of time series, including clustering and d...
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. ...
Time series data mining is one of the most studied and researched areas. This need in mining time se...
Demand for forecasting has increased significantly due to the rapid changes in technology, social ch...
Data Mining (DM) methods are being increasingly used in prediction with time series data, in additio...
Data mining refers to the extraction of knowledge by analyzing the data from different perspectives ...
Time series represent sequences of data points where usually their order is defined by the time when...