Time-series clustering is an essential unsupervised technique for data analysis, applied to many real-world fields, such as medical analysis and DNA microarray. Existing clustering methods are usually based on the assumption that the data is complete. However, time series in real-world applications often contain missing values. Traditional strategy (imputing first and then clustering) does not optimize the imputation and clustering process as a whole, which not only makes per- formance dependent on the combination of imputation and clustering methods but also fails to achieve satisfactory re- sults. How to best improve the clustering performance on incomplete time series remains a challenge. This paper pro- poses a novel unsupervised tempor...
This work is about classifying time series with missing data with the help of imputation and selecte...
Abstract- Clustering methods are commonly used on time series, either as a preprocessing for other m...
77 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.The classical approaches to cl...
International audienceTime series are ubiquitous in data mining applications. Similar to other types...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
Abstract—Time series clustering provides underpinning tech-niques for discovering the intrinsic stru...
Time-series data is generated ubiquitously from Internet-of-Things (IoT) infrastructure, connected a...
Time series is one of the forms of data presentation that is used in many studies. It is convenient,...
The time series cluster kernel (TCK) provides a powerful tool for analysing multivariate time series...
Time series data are usually characterized by having missing values, high dimensionality, and large ...
The beginning of the age of artificial intelligence and machine learning has created new challenges ...
Given the ubiquity of time series data in scientific, medical and financial domains, data miners hav...
Clustering methods are commonly applied to time series, either as a preprocessing stage for other me...
Classification of time series data is an important problem with applications in virtually every scie...
Because time series are a ubiquitous and increasingly prevalent type of data, there has been much re...
This work is about classifying time series with missing data with the help of imputation and selecte...
Abstract- Clustering methods are commonly used on time series, either as a preprocessing for other m...
77 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.The classical approaches to cl...
International audienceTime series are ubiquitous in data mining applications. Similar to other types...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
Abstract—Time series clustering provides underpinning tech-niques for discovering the intrinsic stru...
Time-series data is generated ubiquitously from Internet-of-Things (IoT) infrastructure, connected a...
Time series is one of the forms of data presentation that is used in many studies. It is convenient,...
The time series cluster kernel (TCK) provides a powerful tool for analysing multivariate time series...
Time series data are usually characterized by having missing values, high dimensionality, and large ...
The beginning of the age of artificial intelligence and machine learning has created new challenges ...
Given the ubiquity of time series data in scientific, medical and financial domains, data miners hav...
Clustering methods are commonly applied to time series, either as a preprocessing stage for other me...
Classification of time series data is an important problem with applications in virtually every scie...
Because time series are a ubiquitous and increasingly prevalent type of data, there has been much re...
This work is about classifying time series with missing data with the help of imputation and selecte...
Abstract- Clustering methods are commonly used on time series, either as a preprocessing for other m...
77 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.The classical approaches to cl...