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FreeGrad
        Jack Gerrits edited this page Nov 19, 2021 
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    Freegrad is a base learning algorithm contributed by @zmhammedi. It is described in the associated paper. It accepts simple labels and produces scalar predictions.
FreeGrad Options:
  --freegrad            Diagonal FreeGrad Algorithm
  --restart             Use the FreeRange restarts
  --project             Project the outputs to adapt to both the lipschitz and
                        comparator norm
  --radius arg          Radius of the l2-ball for the projection. If not
                        supplied, an adaptive radius will be used.
  --fepsilon arg (=1, ) Initial wealth
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