Online probabilistic label trees

07/08/2020
by   Kalina Jasinska-Kobus, et al.
0

We introduce online probabilistic label trees (OPLTs), an algorithm that trains a label tree classifier in a fully online manner, without any prior knowledge about the number of training instances, their features and labels. OPLTs are characterized by low time and space complexity as well as strong theoretical guarantees. They can be used for online multi-label and multi-class classification, including the very challenging scenarios of one- or few-shot learning. We demonstrate the attractiveness of OPLTs in a wide empirical study on several instances of the tasks mentioned above.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/23/2020

Probabilistic Label Trees for Extreme Multi-label Classification

Extreme multi-label classification (XMLC) is a learning task of tagging ...
research
10/20/2021

Propensity-scored Probabilistic Label Trees

Extreme multi-label classification (XMLC) refers to the task of tagging ...
research
10/27/2018

A no-regret generalization of hierarchical softmax to extreme multi-label classification

Extreme multi-label classification (XMLC) is a problem of tagging an ins...
research
06/01/2019

On the computational complexity of the probabilistic label tree algorithms

Label tree-based algorithms are widely used to tackle multi-class and mu...
research
07/17/2018

Contextual Memory Trees

We design and study a Contextual Memory Tree (CMT), a learning memory co...
research
02/02/2023

Fast Online Value-Maximizing Prediction Sets with Conformal Cost Control

Many real-world multi-label prediction problems involve set-valued predi...
research
03/02/2018

A multi-instance deep neural network classifier: application to Higgs boson CP measurement

We investigate properties of a classifier applied to the measurements of...

Please sign up or login with your details

Forgot password? Click here to reset