In terms of a general time theory which addresses time-elements as typed point-based intervals, a formal characterization of time-series and state-sequences is introduced. Based on this framework, the subsequence matching problem is specially tackled by means of being transferred into bipartite graph matching problem. Then a hybrid similarity model with high tolerance of inversion, crossover and noise is proposed for matching the corresponding bipartite graphs involving both temporal and non-temporal measurements. Experimental results on reconstructed time-series data from UCI KDD Archive demonstrate that such an approach is more effective comparing with the traditional similarity model based algorithms, promising robust techniques for lage...
Subsequence search and distance measures are crucial tools in time series data mining. This paper pr...
In this paper we propose a new method for distortion-free time-series subsequence matching. Our meth...
AbstractWe define the problem of bounded similarity querying in time-series databases, which general...
We propose an embedding-based framework for subsequence matching in time-series databases that impro...
A method for approximate subsequence matching is introduced, that significantly improves the efficie...
Based on a formal characterization of time-series and state-sequences, this paper proposes a new alg...
Existing work on similar sequence matching has focused on either whole matching or range subsequence...
We study a set of linear transformations on the Fourier series representation of a sequence that can...
The problem of time-series retrieval arises in many fields of science and constitutes many important...
A Time Series Clique (TSC) consists of multiple time series which are related to each other by natur...
Graphs that evolve over time are called temporal graphs. They can be used to describe and represent ...
grantor: University of TorontoThe idea of posing queries in terms of similarity of objects...
We study similarity queries for time series data where similarity is defined in terms of a set of li...
DoctorThis dissertation studies an efficient similarity search for time series data represented as i...
Similarity search in time series data is required in many application fields. The most prominent wor...
Subsequence search and distance measures are crucial tools in time series data mining. This paper pr...
In this paper we propose a new method for distortion-free time-series subsequence matching. Our meth...
AbstractWe define the problem of bounded similarity querying in time-series databases, which general...
We propose an embedding-based framework for subsequence matching in time-series databases that impro...
A method for approximate subsequence matching is introduced, that significantly improves the efficie...
Based on a formal characterization of time-series and state-sequences, this paper proposes a new alg...
Existing work on similar sequence matching has focused on either whole matching or range subsequence...
We study a set of linear transformations on the Fourier series representation of a sequence that can...
The problem of time-series retrieval arises in many fields of science and constitutes many important...
A Time Series Clique (TSC) consists of multiple time series which are related to each other by natur...
Graphs that evolve over time are called temporal graphs. They can be used to describe and represent ...
grantor: University of TorontoThe idea of posing queries in terms of similarity of objects...
We study similarity queries for time series data where similarity is defined in terms of a set of li...
DoctorThis dissertation studies an efficient similarity search for time series data represented as i...
Similarity search in time series data is required in many application fields. The most prominent wor...
Subsequence search and distance measures are crucial tools in time series data mining. This paper pr...
In this paper we propose a new method for distortion-free time-series subsequence matching. Our meth...
AbstractWe define the problem of bounded similarity querying in time-series databases, which general...