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Final answer:
Driverless vehicles utilize reinforcement learning to improve performance and decision-making based on feedback, eliminating human biases from training data.
Explanation:
Driverless vehicles that learn as they go make use of reinforcement learning. In the context of self-driving cars and trucks, reinforcement learning involves algorithms being trained to make driving decisions based on continuous feedback from past actions and experiences.
Reinforcement learning focuses on improving the performance of algorithms over multiple engagements with a problem, adjusting actions based on continuous feedback. This approach helps eliminate human biases associated with training data, allowing for the creation of more standardized training programs.
Deep learning and reinforcement learning contribute to enhancing the capabilities of autonomous vehicles by enabling them to learn from their experiences and interactions.
Learn more about Reinforcement learning in driverless vehicles here:
https://brainly.com/question/41980929
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