Machine Learning: Progress and Prospects
Alexander Gammerman

TL;DR
This paper provides an overview of machine learning's history, theoretical advances, and practical projects, reflecting on its development from 1949 to recent updates in 2025.
Contribution
It offers a comprehensive historical and conceptual overview of machine learning, integrating past milestones with recent developments and updated references.
Findings
Historical milestones in machine learning identified
The field includes diverse subfields like neural networks and clustering
Recent developments have expanded theoretical and practical understanding
Abstract
This Inaugural Lecture was given at Royal Holloway University of London in 1996. It covers an introduction to machine learning and describes various theoretical advances and practical projects in the field. The Lecture here is presented in its original format, but a few remarks have been added in 2025 to reflect recent developments, and the list of references has been updated to enhance the convenience and accuracy for readers. When did machine learning start? Maybe a good starting point is 1949, when Claude Shannon proposed a learning algorithm for chess-playing programs. Or maybe we should go back to the 1930s when Ronald Fisher developed discriminant analysis - a type of learning where the problem is to construct a decision rule that separates two types of vectors. Or could it be the 18th century when David Hume discussed the idea of induction? Or the 14th century, when William of…
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Taxonomy
TopicsMachine Learning and Data Classification · Explainable Artificial Intelligence (XAI) · Big Data and Digital Economy
