We address the problem of classifying time series according to their morphological features in the time domain. In a supervised machine-learning framework, we induce a classification procedure from a set of preclassified examples. For each class, we infer a model that captures its morphological features using Bayesian model induction and the minimum message length approach to assign priors. In the performance task, we classify a time series in one of the learned classes when there is enough evidence to support that decision. Time series with sufficiently novel features, belonging to classes not present in the training set, are recognized as such. We report results from experiments in a monitoring domain of interest to NASA
Time-series data streams often contain predictive value in the form of unique patterns. While these ...
We present a novel model-metric co-learning (MMCL) methodology for sequence classification which lea...
We introduce the PrAGMaTiSt: Prediction and Analysis for Generalized Markov Time Series of States, a...
Sequential data (a.k.a. time-series) a rise in a multitude of different fields such as bi oinformati...
abstract: Temporal data are increasingly prevalent and important in analytics. Time series (TS) data...
In supervised classification, one attempts to learn a model of how objects map to labels by selectin...
<p>The analysis of time series and sequences has been challenging in both statistics and machine lea...
In the last years, there is a huge increase of interest in application of time series. Virtually all...
<p>Data driven approaches to modeling time-series are important in a variety of applications from ma...
To predict the future behavior of a system, we can exploit the information collected in the past, tr...
In the last years, there is a huge increase of interest in application of time series. Virtually all...
Time series represent the most widely spread type of data, occurring in a myriad of application doma...
Sequential data (a.k.a. time-series) a rise in a multitude of different fields such as bi oinformati...
This thesis explores the possibility of feature-driven time series pattern recognition from both pra...
Abstract—Time series classification has been an active area of research in the data mining community...
Time-series data streams often contain predictive value in the form of unique patterns. While these ...
We present a novel model-metric co-learning (MMCL) methodology for sequence classification which lea...
We introduce the PrAGMaTiSt: Prediction and Analysis for Generalized Markov Time Series of States, a...
Sequential data (a.k.a. time-series) a rise in a multitude of different fields such as bi oinformati...
abstract: Temporal data are increasingly prevalent and important in analytics. Time series (TS) data...
In supervised classification, one attempts to learn a model of how objects map to labels by selectin...
<p>The analysis of time series and sequences has been challenging in both statistics and machine lea...
In the last years, there is a huge increase of interest in application of time series. Virtually all...
<p>Data driven approaches to modeling time-series are important in a variety of applications from ma...
To predict the future behavior of a system, we can exploit the information collected in the past, tr...
In the last years, there is a huge increase of interest in application of time series. Virtually all...
Time series represent the most widely spread type of data, occurring in a myriad of application doma...
Sequential data (a.k.a. time-series) a rise in a multitude of different fields such as bi oinformati...
This thesis explores the possibility of feature-driven time series pattern recognition from both pra...
Abstract—Time series classification has been an active area of research in the data mining community...
Time-series data streams often contain predictive value in the form of unique patterns. While these ...
We present a novel model-metric co-learning (MMCL) methodology for sequence classification which lea...
We introduce the PrAGMaTiSt: Prediction and Analysis for Generalized Markov Time Series of States, a...