Time series analysis is a fundamental task in various application domains, and deep learning approaches have demonstrated remarkable performance in this area. However, many real-world time series data exhibit significant periodic or quasi-periodic dynamics that are often not adequately captured by existing deep learning-based solutions. This results in an incomplete representation of the underlying dynamic behaviors of interest. To address this gap, we propose an unsupervised method called Floss that automatically regularizes learned representations in the frequency domain. The Floss method first automatically detects major periodicities from the time series. It then employs periodic shift and spectral density similarity measures to learn m...
Capturing the dynamical properties of time series concisely as interpretable feature vectors can ena...
The mining of periodic patterns in time series databases is an interesting data mining problem that...
Periodic phenomena are oscillating signals found in many naturally occurring time series. A periodog...
Time series analysis is a fundamental task in various application domains, and deep learning approac...
Recently, frequency transformation (FT) has been increasingly incorporated into deep learning models...
Time series forecasting has played the key role in different industrial, including finance, traffic,...
Periodic phenomena are oscillating signals found in many naturally-occurring time series. A periodo...
Deep learning has been actively studied for time series forecasting, and the mainstream paradigm is ...
The important class of regularities that exist in a time series is nothing but the Partial periodic ...
In many real-world applications today, it is critical to continuously record and monitor certain mac...
As a major type of data, time series possess invaluable latent knowledge for describing the real wor...
Time series are everywhere and exist in a wide range of domains. Electrical activities of manufactur...
In this thesis, we develop a collection of deep learning models for time series forecasting. Primary...
Time series data mining is one branch of data mining. Time series analysis and prediction have alwa...
This dissertation is motivated from enabling various tasks in large scale data mining of time series...
Capturing the dynamical properties of time series concisely as interpretable feature vectors can ena...
The mining of periodic patterns in time series databases is an interesting data mining problem that...
Periodic phenomena are oscillating signals found in many naturally occurring time series. A periodog...
Time series analysis is a fundamental task in various application domains, and deep learning approac...
Recently, frequency transformation (FT) has been increasingly incorporated into deep learning models...
Time series forecasting has played the key role in different industrial, including finance, traffic,...
Periodic phenomena are oscillating signals found in many naturally-occurring time series. A periodo...
Deep learning has been actively studied for time series forecasting, and the mainstream paradigm is ...
The important class of regularities that exist in a time series is nothing but the Partial periodic ...
In many real-world applications today, it is critical to continuously record and monitor certain mac...
As a major type of data, time series possess invaluable latent knowledge for describing the real wor...
Time series are everywhere and exist in a wide range of domains. Electrical activities of manufactur...
In this thesis, we develop a collection of deep learning models for time series forecasting. Primary...
Time series data mining is one branch of data mining. Time series analysis and prediction have alwa...
This dissertation is motivated from enabling various tasks in large scale data mining of time series...
Capturing the dynamical properties of time series concisely as interpretable feature vectors can ena...
The mining of periodic patterns in time series databases is an interesting data mining problem that...
Periodic phenomena are oscillating signals found in many naturally occurring time series. A periodog...