Surpassing Human-Level Performance (C3W1L11) | Summary and Q&A

14.6K views
August 25, 2017
by
DeepLearningAI
YouTube video player
Surpassing Human-Level Performance (C3W1L11)

TL;DR

Surpassing human level performance in machine learning is challenging but possible with enough data and structured problems.

Install to Summarize YouTube Videos and Get Transcripts

Key Insights

  • 🎰 Surpassing human level performance in machine learning is challenging as the distinction between avoidable bias and variance becomes less clear.
  • 🙈 Learning from structured data can assist in surpassing human level performance, as seen in tasks like online advertising, product recommendations, logistics, and loan approval.
  • 💄 Humans tend to excel in natural perception tasks, making it more difficult for computers to surpass human performance in these areas.
  • 👻 The availability of large datasets allows computers to identify patterns and surpass human level performance in certain tasks.
  • 😯 Recent advances in deep learning have allowed computers to surpass human level performance in tasks such as speech recognition and image recognition.
  • 🎰 However, surpassing human level performance in natural perception tasks remains more challenging for machines.
  • 🫠 Certain medical tasks, such as reading ECGs and diagnosing skin cancer, show potential for computers to surpass human performance.

Transcript

long teams often find it exciting to surpass human level performance on a specific recognition or classification task let's talk over some of the things you see if you're trying to accomplish this yourself we've discussed before how machine learning progress gets harder as you approach or even surpass human level performance let's talk over one mor... Read More

Questions & Answers

Q: Why does machine learning progress become harder as it approaches human level performance?

Machine learning progress becomes harder as it approaches human level performance because the distinction between avoidable bias and variance becomes less clear, making it challenging to know how to improve the algorithm.

Q: Is it possible for machine learning to surpass human level performance in certain tasks?

Yes, in tasks such as online advertising, product recommendations, logistics, and loan approval, machine learning algorithms have shown to achieve better performance than humans due to their ability to learn from structured data and access vast amounts of information.

Q: What types of problems are humans generally better at than computers in machine learning?

Humans tend to outperform computers in natural perception tasks such as computer vision, speech recognition, and natural language processing. These tasks require a level of understanding and interpretation that is more challenging for machines to replicate.

Q: What are some examples of tasks in which computers have surpassed human level performance?

Computers have achieved human-level performance in tasks such as speech recognition and certain image recognition tasks. Additionally, in medical fields like reading ECGs, diagnosing skin cancer, and some radiology tasks, computers are showing promising results.

Summary & Key Takeaways

  • Surpassing human level performance in machine learning proves to be more difficult as algorithms approach or surpass human accuracy.

  • Estimating avoidable bias is easier when there is a clear difference in error rates between human performance and algorithm performance.

  • When algorithm performance approaches human performance, determining avoidable bias becomes more challenging.

Share This Summary 📚

Summarize YouTube Videos and Get Video Transcripts with 1-Click

Download browser extensions on:

Explore More Summaries from DeepLearningAI 📚

Summarize YouTube Videos and Get Video Transcripts with 1-Click

Download browser extensions on: