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2025FallB-X-CSE571-78760 模块 1: 机器学习简介知识检查 Module 1: Intro to Machine Learning Knowledge Check

Single choice

强化学习的重点是什么?What is the focus of reinforcement learning?

Options
A.通过示范学习 Learning by demonstration
B.自主学习的智能体 An agent leaning autonomously
C.生成训练数据 Generating training data
D.理解数据的结构 Understanding the structure of data
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逐步分析题目与各选项,帮助理解强化学习的核心。 Question: 强化学习的重点是什么?What is the focus of reinforcement learning? Option 1: 通过示范学习 Learning by demonst......Login to view full explanation

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