Online learning using multiple times weight updating

10/26/2018
by   Charanjeet, et al.
0

Online learning makes sequence of decisions with partial data arrival where next movement of data is unknown. In this paper, we have presented a new idea as multiple times weight updating that update the weight iteratively for same instance. The proposed technique analyzed with popular algorithms from literature and experimented using established tool. The results indicates that mistake rate reduces to zero or close to zero for various datasets and algorithms. The overhead running cost is not too expensive and achieving mistake rate close to zero further strengthen the proposed technique. The proposed technique could be helpful to meet real life challenges.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/14/2022

An Application of Online Learning to Spacecraft Memory Dump Optimization

In this paper, we present a real-world application of online learning wi...
research
10/12/2020

Inverse Multiobjective Optimization Through Online Learning

We study the problem of learning the objective functions or constraints ...
research
07/30/2018

Online Learning with an Almost Perfect Expert

We study the online learning problem where a forecaster makes a sequence...
research
04/17/2017

Effective Warm Start for the Online Actor-Critic Reinforcement Learning based mHealth Intervention

Online reinforcement learning (RL) is increasingly popular for the perso...
research
10/04/2020

Data-efficient Online Classification with Siamese Networks and Active Learning

An ever increasing volume of data is nowadays becoming available in a st...
research
07/06/2020

Deep Partial Updating

Emerging edge intelligence applications require the server to continuous...

Please sign up or login with your details

Forgot password? Click here to reset