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  1. Apache MADlib
  2. MADLIB-988

Model parameter weighting

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    • New Feature
    • Status: Open
    • Major
    • Resolution: Unresolved
    • None
    • None
    • None

    Description

      Summary

      There are several instances where assigning weights to training samples or observations is desirable in order to portray known information about the data or handle situations where data quality varies. For example, the training sample may have a disproportionate number of observations in certain classes, or the data may have been collected in a stratified manner with one strata having greater or lesser sampling intensity. In such cases, observations can be weighted to reflect the importance of each point in the fitted model.

      References

      [1] See requirements document authored by Pivotal data science team
      (attached)

      Attachments

        1. Model_parameter_weighting.pdf
          618 kB
          Frank McQuillan

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              Unassigned Unassigned
              fmcquillan Frank McQuillan
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              Dates

                Created:
                Updated: