Why does a 2% human-level reference give better improvement tools when a system is at 10% error, compared to when it is at 40% error?
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Why Comparing to Human-Level Performance Helps ML Development
When a system has 40% error, which human-level reference is most useful for guiding improvement?
When a system's error rate is 40%, choosing a junior doctor (10% error) vs. an experienced doctor (5% error) as the human-level reference makes little practical difference.
If your system is already at _____ % error, defining the human-level reference as 2% gives better tools to keep improving.
Match each system error scenario to its implication for selecting a human-level reference.
Order the reasoning steps for deciding whether precision in the human-level reference matters for your system.
Why does a 2% human-level reference give better improvement tools when a system is at 10% error, compared to when it is at 40% error?
At high system error rates such as 40%, a more precise human-level reference always provides significantly better guidance than a less precise one.
According to Machine Learning Yearning, human error rate can be used as the _____ error rate when hoping for human-level performance.
Match each annotator type or system scenario to its description from Machine Learning Yearning.
Order the steps in the decision process for selecting an appropriate human-level error reference for an ML system.