Reward Is Enough (Machine Learning Research Paper Explained)

#reinforcementlearning #deepmind #agi What’s the most promising path to creating Artificial General Intelligence (AGI)? This paper makes the bold claim that a learning agent maximizing its reward in a sufficiently complex environment will necessarily develop intelligence as a by-product, and that Reward Maximization is the best way to move the creation of AGI forward. The paper is a mix of philosophy, engineering, and futurism, and raises many points of discussion. OUTLINE: 0:00 - Intro & Outline 4:10 - Reward Maximization 10:10 - The Reward-is-Enough Hypothesis 13:15 - Abilities associated with intelligence 16:40 - My Criticism 26:15 - Reward Maximization through Reinforcement Learning 31:30 - Discussion, Conclusion & My Comments Paper: Abstract: In this article we hypothesise that intelligence, and its associated abilities, can be understood as subserving the maximisation of re
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