[7.10][DOCS] Adds ML related release highlights to What's new. (#63934)

Co-authored-by: James Rodewig <40268737+jrodewig@users.noreply.github.com>
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István Zoltán Szabó 2020-10-20 15:46:31 +02:00 committed by GitHub
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@ -63,6 +63,33 @@ the `data_hot` tier automatically, while standalone indices will be allocated to
the `data_content` tier automatically. Nodes with the pre-existing `data` role are
considered to be part of all tiers.
[discrete]
[[auc-roc-eval-class]]
=== AUC ROC evaluation metrics for classification analysis
{ml-docs}/ml-dfanalytics-evaluate.html#ml-dfanalytics-class-aucroc[Area under the curve of receiver operating characteristic (AUC ROC)]
is an evaluation metric that has been available for {oldetection} since 7.3 and
now is available for {classification} analysis. AUC ROC represents the
performance of the {classification} process at different predicted probability
thresholds. The true positive rate for a specific class is compared against the
rate of all the other classes combined at the different threshold levels to
create the curve.
[discrete]
[[custom-feature-processor-dfa]]
=== Custom feature processors in {dfanalytics}
Feature processors enable you to extract process features from document fields.
You can use these features in model training and model deployment. Custom
feature processors provide a mechanism to create features that can be used at
search and ingest time and they dont take up space in the index.
This process more tightly couples feature generation with the resulting model.
The result is simplified model management as both the features and the model can
easily follow the same life cycle.
[discrete]
[[points-in-time-for-search]]
=== Points in time (PITs) for search