Time series observations can be seen as realizations of an underlying dynamical system governed by rules that we typically do not know. For time series learning tasks, we need to understand that we fit our model on available data, which is a unique realized history. Training on a single realization often induces severe overfitting lacking generalization. To address this issue, we introduce a general recursive framework for time series augmentation, which we call Recursive Interpolation Method, denoted as RIM. New samples are generated using a recursive interpolation function of all previous values in such a way that the enhanced samples preserve the original inherent time series dynamics. We perform theoretical analysis to characterize the ...
This thesis contributes to the area of time-series prediction by presenting a novel, noise resistant...
The recursive methods are popular in time series analysis since they are computationally efficient a...
Temporal difference (TD) methods constitute a class of methods for learning predictions in multi-ste...
Large labeled quantities and diversities of training data are often needed for supervised, data-ba...
<p>Data driven approaches to modeling time-series are important in a variety of applications from ma...
Classification of time series data is an important problem with applications in virtually every scie...
This dissertation is motivated from enabling various tasks in large scale data mining of time series...
This thesis addresses the problem where we want to apply machine learning over a small data set of m...
In this paper we introduce design principles for unsupervised detection of regularities (like causal...
We address the problem of interpolating a scalar function of time and space. We assume the function ...
Temporal dierence (TD) methods constitute a class of methods for learning predictions in multi-step ...
Time series classification (TSC) is widely used in various real-world applications such as human act...
This paper shows that masked autoencoder with extrapolator (ExtraMAE) is a scalable self-supervised ...
This is a revised version of the 1984 book of the same name but considerably modified and enlarged t...
Incorporating sequence-to-sequence models into history-based Reinforcement Learning (RL) provides a ...
This thesis contributes to the area of time-series prediction by presenting a novel, noise resistant...
The recursive methods are popular in time series analysis since they are computationally efficient a...
Temporal difference (TD) methods constitute a class of methods for learning predictions in multi-ste...
Large labeled quantities and diversities of training data are often needed for supervised, data-ba...
<p>Data driven approaches to modeling time-series are important in a variety of applications from ma...
Classification of time series data is an important problem with applications in virtually every scie...
This dissertation is motivated from enabling various tasks in large scale data mining of time series...
This thesis addresses the problem where we want to apply machine learning over a small data set of m...
In this paper we introduce design principles for unsupervised detection of regularities (like causal...
We address the problem of interpolating a scalar function of time and space. We assume the function ...
Temporal dierence (TD) methods constitute a class of methods for learning predictions in multi-step ...
Time series classification (TSC) is widely used in various real-world applications such as human act...
This paper shows that masked autoencoder with extrapolator (ExtraMAE) is a scalable self-supervised ...
This is a revised version of the 1984 book of the same name but considerably modified and enlarged t...
Incorporating sequence-to-sequence models into history-based Reinforcement Learning (RL) provides a ...
This thesis contributes to the area of time-series prediction by presenting a novel, noise resistant...
The recursive methods are popular in time series analysis since they are computationally efficient a...
Temporal difference (TD) methods constitute a class of methods for learning predictions in multi-ste...