ctr_metric_bundle¶
- paddle.static. ctr_metric_bundle ( input, label, ins_tag_weight=None ) [source]
- 
         ctr related metric layer This function help compute the ctr related metrics: RMSE, MAE, predicted_ctr, q_value. To compute the final values of these metrics, we should do following computations using total instance number: MAE = local_abserr / instance number RMSE = sqrt(local_sqrerr / instance number) predicted_ctr = local_prob / instance number q = local_q / instance number Note that if you are doing distribute job, you should all reduce these metrics and instance number first - Parameters
- 
           - input (Tensor) – A floating-point 2D Tensor, values are in the range [0, 1]. Each row is sorted in descending order. This input should be the output of topk. Typically, this Tensor indicates the probability of each label. 
- label (Tensor) – A 2D int Tensor indicating the label of the training data. The height is batch size and width is always 1. 
- ins_tag_weight (Tensor) – A 2D int Tensor indicating the ins_tag_weight of the training data. 1 means real data, 0 means fake data. A LoDTensor or Tensor with type float32,float64. 
 
- Returns
- 
           Local sum of squared error local_abserr(Tensor): Local sum of abs error local_prob(Tensor): Local sum of predicted ctr local_q(Tensor): Local sum of q value 
- Return type
- 
           local_sqrerr(Tensor) 
 - Examples 1:
- 
           import paddle paddle.enable_static() data = paddle.static.data(name="data", shape=[32, 32], dtype="float32") label = paddle.static.data(name="label", shape=[-1, 1], dtype="int32") predict = paddle.nn.functional.sigmoid(paddle.static.nn.fc(input=data, size=1)) auc_out = paddle.static.ctr_metric_bundle(input=predict, label=label) 
- Examples 2:
- 
           import paddle paddle.enable_static() data = paddle.static.data(name="data", shape=[32, 32], dtype="float32") label = paddle.static.data(name="label", shape=[-1, 1], dtype="int32") predict = paddle.nn.functional.sigmoid(paddle.static.nn.fc(input=data, size=1)) ins_tag_weight = paddle.static.data(name='ins_tag', shape=[-1,16], lod_level=0, dtype='int64') auc_out = paddle.static.ctr_metric_bundle(input=predict, label=label, ins_tag_weight=ins_tag_weight) 
 
