Low-Rank Robust Online Distance/Similarity Learning based on the Rescaled Hinge Loss

10/07/2020
by   Davood Zabihzadeh, et al.
0

An important challenge in metric learning is scalability to both size and dimension of input data. Online metric learning algorithms are proposed to address this challenge. Existing methods are commonly based on (Passive Aggressive) PA approach. Hence, they can rapidly process large volumes of data with an adaptive learning rate. However, these algorithms are based on the Hinge loss and so are not robust against outliers and label noise. Also, existing online methods usually assume training triplets or pairwise constraints are exist in advance. However, many datasets in real-world applications are in the form of input data and their associated labels. We address these challenges by formulating the online Distance-Similarity learning problem with the robust Rescaled hinge loss function. The proposed model is rather general and can be applied to any PA-based online Distance-Similarity algorithm. Also, we develop an efficient robust one-pass triplet construction algorithm. Finally, to provide scalability in high dimensional DML environments, the low-rank version of the proposed methods is presented that not only reduces the computational cost significantly but also keeps the predictive performance of the learned metrics. Also, it provides a straightforward extension of our methods for deep Distance-Similarity learning. We conduct several experiments on datasets from various applications. The results confirm that the proposed methods significantly outperform state-of-the-art online DML methods in the presence of label noise and outliers by a large margin.

READ FULL TEXT

page 14

page 18

page 26

page 29

research
04/26/2019

Robust Metric Learning based on the Rescaled Hinge Loss

Distance/Similarity learning is a fundamental problem in machine learnin...
research
04/05/2018

Large Scale Local Online Similarity/Distance Learning Framework based on Passive/Aggressive

Similarity/Distance measures play a key role in many machine learning, p...
research
09/29/2016

OPML: A One-Pass Closed-Form Solution for Online Metric Learning

To achieve a low computational cost when performing online metric learni...
research
04/15/2021

Sparse online relative similarity learning

For many data mining and machine learning tasks, the quality of a simila...
research
06/27/2020

Evolving Metric Learning for Incremental and Decremental Features

Online metric learning has been widely exploited for large-scale data cl...
research
01/07/2017

Similarity Function Tracking using Pairwise Comparisons

Recent work in distance metric learning has focused on learning transfor...
research
02/08/2022

Learning Similarity Metrics for Volumetric Simulations with Multiscale CNNs

Simulations that produce three-dimensional data are ubiquitous in scienc...

Please sign up or login with your details

Forgot password? Click here to reset