Search Snapshot: Too simple models underfit the data and too complex models overfit the data? For years, machine learning theory told us a simple story: make your model too complex and it will overfit.
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The answer lies in the mysterious "simplicity bias" that emerges at scale, a core concept of the For years, machine learning theory told us a simple story: make your model too complex and it will overfit. Too simple models underfit the data and too complex models overfit the data?
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- For years, machine learning theory told us a simple story: make your model too complex and it will overfit.
- Too simple models underfit the data and too complex models overfit the data?
- The answer lies in the mysterious "simplicity bias" that emerges at scale, a core concept of the
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