An increasing amount of unlabeled time series data available render the semi-supervised paradigm a suitable approach to tackle classification problems with a reduced quantity of labeled data. Self-labeled techniques stand out from semi-supervised classification methods due to their simplicity and the lack of strong assumptions about the distribution of the labeled and unlabeled data. This paper addresses the relevance of these techniques in the time series classification context by means of an empirical study that compares successful self-labeled methods in conjunction with various learning schemes and dissimilarity measures. Our experiments involve 35 time series datasets with different ratios of labeled data, aiming to measure the transdu...
Semi-supervised learning methods create models from a few labeled instances and a great number of un...
AbstractWe present a semi-supervised time series classification method based on co-training which us...
We review some of the literature on semi-supervised learning in this paper. Traditional classifiers ...
An increasing amount of unlabeled time series data available render the semi-supervised paradigm a s...
Classification of time series data is an important problem with applications in virtually every scie...
Self-labeled techniques are semi-supervised classification methods that address the shortage of labe...
Abstract. In this thesis, I study methods that classify time series in a semi-supervised manner. I c...
Abstract—Self-labeled techniques are semi-supervised classifi-cation methods that address the shorta...
Traditional supervised time series classification (TSC) tasks assume that all training data are labe...
We propose a unified perspective of a large family of semi-supervised learning algorithms, which sel...
Learning time-series representations when only unlabeled data or few labeled samples are available c...
Semi-supervised learning (SSL) has been actively studied due to its ability to alleviate the relianc...
Semi Supervised Learning involves using both labeled and unlabeled data to train a classifier or for...
Semi-supervised learning aims at discovering spatial structures in high-dimensional input spaces whe...
Graph-based semi-supervised learning (SSL) algorithms perform well when the data lie on a low-dimens...
Semi-supervised learning methods create models from a few labeled instances and a great number of un...
AbstractWe present a semi-supervised time series classification method based on co-training which us...
We review some of the literature on semi-supervised learning in this paper. Traditional classifiers ...
An increasing amount of unlabeled time series data available render the semi-supervised paradigm a s...
Classification of time series data is an important problem with applications in virtually every scie...
Self-labeled techniques are semi-supervised classification methods that address the shortage of labe...
Abstract. In this thesis, I study methods that classify time series in a semi-supervised manner. I c...
Abstract—Self-labeled techniques are semi-supervised classifi-cation methods that address the shorta...
Traditional supervised time series classification (TSC) tasks assume that all training data are labe...
We propose a unified perspective of a large family of semi-supervised learning algorithms, which sel...
Learning time-series representations when only unlabeled data or few labeled samples are available c...
Semi-supervised learning (SSL) has been actively studied due to its ability to alleviate the relianc...
Semi Supervised Learning involves using both labeled and unlabeled data to train a classifier or for...
Semi-supervised learning aims at discovering spatial structures in high-dimensional input spaces whe...
Graph-based semi-supervised learning (SSL) algorithms perform well when the data lie on a low-dimens...
Semi-supervised learning methods create models from a few labeled instances and a great number of un...
AbstractWe present a semi-supervised time series classification method based on co-training which us...
We review some of the literature on semi-supervised learning in this paper. Traditional classifiers ...