[role="xpack"] [testenv="platinum"] [[ml-evaluate-dfanalytics-resources]] === {dfanalytics-cap} evaluation resources Evaluation configuration objects relate to the <>. [discrete] [[ml-evaluate-dfanalytics-properties]] ==== {api-definitions-title} `evaluation`:: (object) Defines the type of evaluation you want to perform. The value of this object can be different depending on the type of evaluation you want to perform. + -- Available evaluation types: * `binary_soft_classification` * `regression` -- `query`:: (object) A query clause that retrieves a subset of data from the source index. See <>. The evaluation only applies to those documents of the index that match the query. [[binary-sc-resources]] ==== Binary soft classification configuration objects Binary soft classification evaluates the results of an analysis which outputs the probability that each {dataframe} row belongs to a certain class. For example, in the context of outlier detection, the analysis outputs the probability whether each row is an outlier. [discrete] [[binary-sc-resources-properties]] ===== {api-definitions-title} `actual_field`:: (string) The field of the `index` which contains the `ground truth`. The data type of this field can be boolean or integer. If the data type is integer, the value has to be either `0` (false) or `1` (true). `predicted_probability_field`:: (string) The field of the `index` that defines the probability of whether the item belongs to the class in question or not. It's the field that contains the results of the analysis. `metrics`:: (object) Specifies the metrics that are used for the evaluation. Available metrics: `auc_roc`:: (object) The AUC ROC (area under the curve of the receiver operating characteristic) score and optionally the curve. Default value is {"includes_curve": false}. `precision`:: (object) Set the different thresholds of the {olscore} at where the metric is calculated. Default value is {"at": [0.25, 0.50, 0.75]}. `recall`:: (object) Set the different thresholds of the {olscore} at where the metric is calculated. Default value is {"at": [0.25, 0.50, 0.75]}. `confusion_matrix`:: (object) Set the different thresholds of the {olscore} at where the metrics (`tp` - true positive, `fp` - false positive, `tn` - true negative, `fn` - false negative) are calculated. Default value is {"at": [0.25, 0.50, 0.75]}. [[regression-evaluation-resources]] ==== {regression-cap} evaluation objects {regression-cap} evaluation evaluates the results of a {regression} analysis which outputs a prediction of values. [discrete] [[regression-evaluation-resources-properties]] ===== {api-definitions-title} `actual_field`:: (string) The field of the `index` which contains the `ground truth`. The data type of this field must be numerical. `predicted_field`:: (string) The field in the `index` that contains the predicted value, in other words the results of the {regression} analysis. `metrics`:: (object) Specifies the metrics that are used for the evaluation. Available metrics are `r_squared` and `mean_squared_error`.