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@ -13,12 +13,12 @@ A span categorizer consists of two parts: a [suggester function](#suggesters)
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that proposes candidate spans, which may or may not overlap, and a labeler model
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that predicts zero or more labels for each candidate.
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This component comes in two forms: `spancat` and `spancat_singlelabel` (added in spaCy v3.5.1). When you
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need to perform multi-label classification on your spans, use `spancat`. The
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`spancat` component uses a `Logistic` layer where the output class probabilities
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are independent for each class. However, if you need to predict at most one true
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class for a span, then use `spancat_singlelabel`.
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It uses a `Softmax` layer and treats the task as a multi-class problem.
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This component comes in two forms: `spancat` and `spancat_singlelabel` (added in
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spaCy v3.5.1). When you need to perform multi-label classification on your
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spans, use `spancat`. The `spancat` component uses a `Logistic` layer where the
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output class probabilities are independent for each class. However, if you need
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to predict at most one true class for a span, then use `spancat_singlelabel`. It
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uses a `Softmax` layer and treats the task as a multi-class problem.
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Predicted spans will be saved in a [`SpanGroup`](/api/spangroup) on the doc.
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Individual span scores can be found in `spangroup.attrs["scores"]`.
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