N2D:(Not Too) Deep clustering via clustering the local manifold of an autoencoded embedding

08/16/2019
by   Ryan McConville, et al.
7

Deep clustering has increasingly been demonstrating superiority over conventional shallow clustering algorithms. Deep clustering algorithms usually combine representation learning with deep neural networks to achieve this performance, typically optimizing a clustering and non-clustering loss. In such cases, an autoencoder is typically connected with a clustering network, and the final clustering is jointly learned by both the autoencoder and clustering network. Instead, we propose to learn an autoencoded embedding and then search this further for the underlying manifold. For simplicity, we then cluster this with a shallow clustering algorithm, rather than a deeper network. We study a number of local and global manifold learning methods on both the raw data and autoencoded embedding, concluding that UMAP in our framework is best able to find the most clusterable manifold in the embedding, suggesting local manifold learning on an autoencoded embedding is effective for discovering higher quality discovering clusters. We quantitatively show across a range of image and time-series datasets that our method has competitive performance against the latest deep clustering algorithms, including out-performing current state-of-the-art on several. We postulate that these results show a promising research direction for deep clustering.

READ FULL TEXT

page 1

page 5

research
01/24/2022

Neural Manifold Clustering and Embedding

Given a union of non-linear manifolds, non-linear subspace clustering or...
research
01/02/2023

G-CEALS: Gaussian Cluster Embedding in Autoencoder Latent Space for Tabular Data Representation

The latent space of autoencoders has been improved for clustering image ...
research
02/15/2021

DAC: Deep Autoencoder-based Clustering, a General Deep Learning Framework of Representation Learning

Clustering performs an essential role in many real world applications, s...
research
08/06/2022

AUTOSHAPE: An Autoencoder-Shapelet Approach for Time Series Clustering

Time series shapelets are discriminative subsequences that have been rec...
research
01/08/2019

Spectral Clustering via Ensemble Deep Autoencoder Learning (SC-EDAE)

Recently, a number of works have studied clustering strategies that comb...
research
06/05/2020

Improving k-Means Clustering Performance with Disentangled Internal Representations

Deep clustering algorithms combine representation learning and clusterin...
research
11/15/2020

Functorial Manifold Learning and Overlapping Clustering

We adapt previous research on topological unsupervised learning to devel...

Please sign up or login with your details

Forgot password? Click here to reset