Online Learning: A Comprehensive Survey
Steven C.H. Hoi, Doyen Sahoo, Jing Lu, Peilin Zhao

TL;DR
This survey comprehensively reviews online learning algorithms, categorizing them by feedback type, and discusses key principles, challenges, and future research directions in the field.
Contribution
It provides a systematic classification and overview of online learning methods, focusing mainly on supervised online learning and highlighting open issues and future directions.
Findings
Classifies online learning into supervised, limited feedback, and unsupervised categories.
Focuses mainly on supervised online learning techniques.
Discusses open challenges and potential future research areas.
Abstract
Online learning represents an important family of machine learning algorithms, in which a learner attempts to resolve an online prediction (or any type of decision-making) task by learning a model/hypothesis from a sequence of data instances one at a time. The goal of online learning is to ensure that the online learner would make a sequence of accurate predictions (or correct decisions) given the knowledge of correct answers to previous prediction or learning tasks and possibly additional information. This is in contrast to many traditional batch learning or offline machine learning algorithms that are often designed to train a model in batch from a given collection of training data instances. This survey aims to provide a comprehensive survey of the online machine learning literatures through a systematic review of basic ideas and key principles and a proper categorization of…
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Taxonomy
TopicsData Stream Mining Techniques · Advanced Bandit Algorithms Research · Machine Learning and Algorithms
