Dimensionality reduction (DR) is used to explore high-dimensional data in many applications. Deep learning techniques such as autoencoders have been used to provide fast, simple to use, and high-quality DR. However, such methods yield worse visual cluster separation than popular methods such as t-SNE and UMAP. We propose a deep learning DR method called Self-Supervised Network Projection (SSNP) which does DR based on pseudo-labels obtained from clustering. We show that SSNP produces better cluster separation than autoencoders, has out-of-sample, inverse mapping, and clustering capabilities, and is very fast and easy to use.</p
Dimensionality reduction (DR) methods aim to map high-dimensional datasets to 2D scatterplots for vi...
In the wake of the revolution brought by Deep Learning, we believe neural networks can be leveraged ...
Dimensionality reduction (DR) methods aim to map high-dimensional datasets to 2D scatterplots for vi...
Dimensionality reduction (DR) is used to explore high-dimensional data in many applications. Deep le...
Dimensionality reduction (DR) is used to explore high-dimensional data in many applications. Deep le...
Dimensionality reduction (DR) is used to explore high-dimensional data in many applications. Deep le...
Dimensionality reduction (DR) is used to explore high-dimensional data in many applications. Deep le...
Dimensionality reduction (DR) is used to explore high-dimensional data in many applications. Deep le...
In the wake of the revolution brought by Deep Learning, we believe neural networks can be leveraged ...
In the wake of the revolution brought by Deep Learning, we believe neural networks can be leveraged ...
In the wake of the revolution brought by Deep Learning, we believe neural networks can be leveraged ...
In the wake of the revolution brought by Deep Learning, we believe neural networks can be leveraged ...
In the wake of the revolution brought by Deep Learning, we believe neural networks can be leveraged ...
Dimensionality reduction (DR) methods create 2D scatterplots of high-dimensional data for visual exp...
Dimensionality reduction (DR) methods create 2D scatterplots of high-dimensional data for visual exp...
Dimensionality reduction (DR) methods aim to map high-dimensional datasets to 2D scatterplots for vi...
In the wake of the revolution brought by Deep Learning, we believe neural networks can be leveraged ...
Dimensionality reduction (DR) methods aim to map high-dimensional datasets to 2D scatterplots for vi...
Dimensionality reduction (DR) is used to explore high-dimensional data in many applications. Deep le...
Dimensionality reduction (DR) is used to explore high-dimensional data in many applications. Deep le...
Dimensionality reduction (DR) is used to explore high-dimensional data in many applications. Deep le...
Dimensionality reduction (DR) is used to explore high-dimensional data in many applications. Deep le...
Dimensionality reduction (DR) is used to explore high-dimensional data in many applications. Deep le...
In the wake of the revolution brought by Deep Learning, we believe neural networks can be leveraged ...
In the wake of the revolution brought by Deep Learning, we believe neural networks can be leveraged ...
In the wake of the revolution brought by Deep Learning, we believe neural networks can be leveraged ...
In the wake of the revolution brought by Deep Learning, we believe neural networks can be leveraged ...
In the wake of the revolution brought by Deep Learning, we believe neural networks can be leveraged ...
Dimensionality reduction (DR) methods create 2D scatterplots of high-dimensional data for visual exp...
Dimensionality reduction (DR) methods create 2D scatterplots of high-dimensional data for visual exp...
Dimensionality reduction (DR) methods aim to map high-dimensional datasets to 2D scatterplots for vi...
In the wake of the revolution brought by Deep Learning, we believe neural networks can be leveraged ...
Dimensionality reduction (DR) methods aim to map high-dimensional datasets to 2D scatterplots for vi...