The study of semi-supervised category learning has shown mixed results on how people jointly use labeled and unlabeled information when learning categories. Here we investigate the possibility that people are sensitive to the value of both labeled and unlabeled items, and that this depends on the structure of the underlying categories. We use an unconstrained free-sorting categorization experiment with a mixture of both labeled and unlabeled stimuli. The results showed that when the distribution of stimuli involved distinct clusters, participants preferred to use the same strategies to sort the stimuli regardless of whether they were given any additional category label information. However, when the stimuli distribution was ambiguous, the s...
In the human category of learning, learning is studied in a supervised, an unsupervised, or a semisu...
Supervised and unsupervised categorization have been studied in separate research traditions. A hand...
Göpfert C, Ben-David S, Bousquet O, Gelly S, Tolstikhin I, Urner R. When can unlabeled data improve ...
The study of semi-supervised category learning has shown mixed results on how people jointly use lab...
The study of semi-supervised category learning has generally focused on how additional unlabeled inf...
The study of semi-supervised category learning has generally focused on how additional unlabeled inf...
The category learning literature has focused primarily on how category knowledge develops under full...
This thesis focusses on characterising how unsupervised training affects learning in humans and mode...
In a categorization task involving both labeled and unlabeled data, it has been shown that humans ma...
Teaching involves a mixture of instruction, self-studying in the absence of a teacher and assessment...
Humans continuously categorise inputs, but only rarely receive explicit feedback as to whether or no...
There has been increased interest in devising learning techniques that combine unlabeled data with l...
We report a supervised category learning experiment in which the training phase contains both classi...
We review some of the literature on semi-supervised learning in this paper. Traditional classifiers ...
The main idea behind semi-supervised learning is that when we do not enough human-generated labels, ...
In the human category of learning, learning is studied in a supervised, an unsupervised, or a semisu...
Supervised and unsupervised categorization have been studied in separate research traditions. A hand...
Göpfert C, Ben-David S, Bousquet O, Gelly S, Tolstikhin I, Urner R. When can unlabeled data improve ...
The study of semi-supervised category learning has shown mixed results on how people jointly use lab...
The study of semi-supervised category learning has generally focused on how additional unlabeled inf...
The study of semi-supervised category learning has generally focused on how additional unlabeled inf...
The category learning literature has focused primarily on how category knowledge develops under full...
This thesis focusses on characterising how unsupervised training affects learning in humans and mode...
In a categorization task involving both labeled and unlabeled data, it has been shown that humans ma...
Teaching involves a mixture of instruction, self-studying in the absence of a teacher and assessment...
Humans continuously categorise inputs, but only rarely receive explicit feedback as to whether or no...
There has been increased interest in devising learning techniques that combine unlabeled data with l...
We report a supervised category learning experiment in which the training phase contains both classi...
We review some of the literature on semi-supervised learning in this paper. Traditional classifiers ...
The main idea behind semi-supervised learning is that when we do not enough human-generated labels, ...
In the human category of learning, learning is studied in a supervised, an unsupervised, or a semisu...
Supervised and unsupervised categorization have been studied in separate research traditions. A hand...
Göpfert C, Ben-David S, Bousquet O, Gelly S, Tolstikhin I, Urner R. When can unlabeled data improve ...