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AdaBoost

A Very Short Introduction of AdaBoost

AdaBoost, introduced in 1995 by Freund and Schapire, transforms weak learners into powerful ensemble models, delivering high predictive accuracy. Widely used in healthcare, traffic optimisation, and education, it remains a cornerstone in machine learning applications.

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Variational Autoencoders (VAEs)

A Very Short Introduction of Variational Autoencoders (VAEs)

Variational Autoencoders (VAEs) are powerful tools that encode data into probabilistic latent spaces, enabling creative data generation and advanced applications like image synthesis and anomaly detection. Widely used across Australian sectors, they improve statistical modelling, satellite imagery, and health data analysis.

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Value Iteration

A Very Short Introduction of Value Iteration

Value iteration, introduced by Richard Bellman in the 1950s, is a dynamic programming algorithm that optimises decision-making in structured environments. Widely used in reinforcement learning, it plays a pivotal role in policy derivation, resource allocation, and traffic optimisation.

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Reward

A Very Short Introduction of Rewards in Machine Learning

The concept of rewards in machine learning, inspired by behavioural psychology, serves as a guiding mechanism for AI systems to optimise decision-making. Widely used in reinforcement learning, rewards enhance performance in diverse applications, from traffic management to energy optimisation.

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TD Lambada

A Very Short Introduction of TD(λ) Algorithm

TD(λ) is a reinforcement learning algorithm that balances short-term and long-term learning, offering efficient and scalable optimisation in complex environments. Its real-world applications include weather prediction, traffic management, and fraud detection, showcasing its versatility.

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TD(0)

TD(0) Algorithm – A Step-by-Step Learning Approach

TD(0) is a foundational reinforcement learning algorithm that excels at incremental decision-making in uncertain environments. Its adaptability and efficiency make it a powerful tool for real-time applications in industries ranging from transport to energy regulation.

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Reinforced Learning

A Very Short Introduction of Reinforcement Learning Fundamentals

Reinforcement Learning (RL) is a powerful AI technique that teaches agents to learn and adapt through rewards and penalties, enabling automation, optimisation, and decision-making in complex systems. With applications in gaming, robotics, and government projects, RL is shaping the future of artificial intelligence.

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