Continuous Histogram Loss: Beyond Neural Similarity

04/06/2020
by   Artem Zholus, et al.
0

Similarity learning has gained a lot of attention from researches in recent years and tons of successful approaches have been recently proposed. However, the majority of the state-of-the-art similarity learning methods consider only a binary similarity. In this paper we introduce a new loss function called Continuous Histogram Loss (CHL) which generalizes recently proposed Histogram loss to multiple-valued similarities, i.e. allowing the acceptable values of similarity to be continuously distributed within some range. The novel loss function is computed by aggregating pairwise distances and similarities into 2D histograms in a differentiable manner and then computing the probability of condition that pairwise distances will not decrease as the similarities increase. The novel loss is capable of solving a wider range of tasks including similarity learning, representation learning and data visualization.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/02/2016

Learning Deep Embeddings with Histogram Loss

We suggest a loss for learning deep embeddings. The new loss does not in...
research
02/05/2021

Graph Attention Collaborative Similarity Embedding for Recommender System

We present Graph Attention Collaborative Similarity Embedding (GACSE), a...
research
06/03/2021

The Earth Mover's Pinball Loss: Quantiles for Histogram-Valued Regression

Although ubiquitous in the sciences, histogram data have not received mu...
research
02/06/2017

Learning similarity preserving representations with neural similarity encoders

Many dimensionality reduction or manifold learning algorithms optimize f...
research
09/20/2019

Deep Metric Learning using Similarities from Nonlinear Rank Approximations

In recent years, deep metric learning has achieved promising results in ...
research
11/14/2022

Deep Autoregressive Regression

In this work, we demonstrate that a major limitation of regression using...

Please sign up or login with your details

Forgot password? Click here to reset