Linking data separation, visual separation, and classifier performance
using pseudo-labeling by contrastive learning
- URL: http://arxiv.org/abs/2302.02663v1
- Date: Mon, 6 Feb 2023 10:01:38 GMT
- Title: Linking data separation, visual separation, and classifier performance
using pseudo-labeling by contrastive learning
- Authors: B\'arbara Caroline Benato and Alexandre Xavier Falc\~ao and
Alexandru-Cristian Telea
- Abstract summary: We argue that the performance of the final classifier depends on the data separation present in the latent space and visual separation present in the projection.
We demonstrate our results by the classification of five real-world challenging image datasets of human intestinal parasites with only 1% supervised samples.
- Score: 125.99533416395765
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Lacking supervised data is an issue while training deep neural networks
(DNNs), mainly when considering medical and biological data where supervision
is expensive. Recently, Embedded Pseudo-Labeling (EPL) addressed this problem
by using a non-linear projection (t-SNE) from a feature space of the DNN to a
2D space, followed by semi-supervised label propagation using a
connectivity-based method (OPFSemi). We argue that the performance of the final
classifier depends on the data separation present in the latent space and
visual separation present in the projection. We address this by first proposing
to use contrastive learning to produce the latent space for EPL by two methods
(SimCLR and SupCon) and by their combination, and secondly by showing, via an
extensive set of experiments, the aforementioned correlations between data
separation, visual separation, and classifier performance. We demonstrate our
results by the classification of five real-world challenging image datasets of
human intestinal parasites with only 1% supervised samples.
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