The rapid growth of Internet of Things (IoT) and sensing technologies has led to an increasing interest in time-series data analysis. In many domains, detecting patterns of IoT data and interpreting these patterns are challenging issues. There are several methods in time-series analysis that deal with issues such as volume and velocity of IoT data streams. However, analysing the content of the data streams and extracting insights from dynamic IoT data is still a challenging task. In this paper, we propose a pattern representation method which represents time-series frames as vectors by first applying Piecewise Aggregate Approximation (PAA) and then applying Lagrangian Multipliers. This method allows representing continuous data as a series ...
Efficient unsupervised algorithms for the detection of patterns in time series data, often called mo...
Most real-world time series data is produced by complex systems. For example, the economy is a socia...
The characterisation of time-series data via their most salient features is extremely important in a...
The rapid growth of Internet of Things (IoT) and sensing technologies has led to an increasing inter...
The massive collection of data via emerging technologies like the Internet of Things (IoT) requires ...
This work proposes a pattern identification and online prediction algorithm for processing Internet ...
Symbolic Time Series Analysis (STA) is an emerging methodology that involves coarse graining of the...
© 2019 Masoomeh ZameniIn the Internet of Things (IoT), data is continuously recorded from different ...
Data sources such as simulations, sensor networks across many application domains generate large vol...
Technical Report Complex System Digital CampusThe advent of the Big Data hype and the consistent rec...
Subsequences-based time series classification algorithms provide interpretable and generally more ac...
Time series representation is one of key issues in time series data mining. Time series is simply a ...
The rise of the Internet of Things (IoT) and the development of more compact and less power-hungry s...
peer reviewedIn this paper, we propose some new tools to allow machine learning classifiers to cope ...
There has been huge progress in the time series domain. Every day, a large volume of time series dat...
Efficient unsupervised algorithms for the detection of patterns in time series data, often called mo...
Most real-world time series data is produced by complex systems. For example, the economy is a socia...
The characterisation of time-series data via their most salient features is extremely important in a...
The rapid growth of Internet of Things (IoT) and sensing technologies has led to an increasing inter...
The massive collection of data via emerging technologies like the Internet of Things (IoT) requires ...
This work proposes a pattern identification and online prediction algorithm for processing Internet ...
Symbolic Time Series Analysis (STA) is an emerging methodology that involves coarse graining of the...
© 2019 Masoomeh ZameniIn the Internet of Things (IoT), data is continuously recorded from different ...
Data sources such as simulations, sensor networks across many application domains generate large vol...
Technical Report Complex System Digital CampusThe advent of the Big Data hype and the consistent rec...
Subsequences-based time series classification algorithms provide interpretable and generally more ac...
Time series representation is one of key issues in time series data mining. Time series is simply a ...
The rise of the Internet of Things (IoT) and the development of more compact and less power-hungry s...
peer reviewedIn this paper, we propose some new tools to allow machine learning classifiers to cope ...
There has been huge progress in the time series domain. Every day, a large volume of time series dat...
Efficient unsupervised algorithms for the detection of patterns in time series data, often called mo...
Most real-world time series data is produced by complex systems. For example, the economy is a socia...
The characterisation of time-series data via their most salient features is extremely important in a...