Reducing Objective Function Mismatch in Deep Clustering with the Unsupervised Companion Objective
Permanent link
https://hdl.handle.net/10037/21442Date
2021-04-19Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
Preservation of local similarity structure is a key challenge in deep clustering. Many recent deep clustering methods therefore use autoencoders to help guide the model's neural network towards an embedding which is more reflective of the input space geometry. However, recent work has shown that autoencoder-based deep clustering models can suffer from objective function mismatch (OFM). In order to improve the preservation of local similarity structure, while simultaneously having a low OFM, we develop a new auxiliary objective function for deep clustering. Our Unsupervised Companion Objective (UCO) encourages a consistent clustering structure at intermediate layers in the network -- helping the network learn an embedding which is more reflective of the similarity structure in the input space. Since a clustering-based auxiliary objective has the same goal as the main clustering objective, it is less prone to introduce objective function mismatch between itself and the main objective. Our experiments show that attaching the UCO to a deep clustering model improves the performance of the model, and exhibits a lower OFM, compared to an analogous autoencoder-based model.
Publisher
Septentrio Academic PublishingCitation
Trosten, Jenssen, Kampffmeyer. Reducing Objective Function Mismatch in Deep Clustering with the Unsupervised Companion Objective. Proceedings of the Northern Lights Deep Learning Workshop. 2021;2Metadata
Show full item recordCollections
Copyright 2021 The Author(s)