Distributed version of Stochastic Dual Coordinate Ascent (SDCA) optimizer for
tf.raw_ops.SdcaOptimizer(
    sparse_example_indices,
    sparse_feature_indices,
    sparse_feature_values,
    dense_features,
    example_weights,
    example_labels,
    sparse_indices,
    sparse_weights,
    dense_weights,
    example_state_data,
    loss_type,
    l1,
    l2,
    num_loss_partitions,
    num_inner_iterations,
    adaptative=True,
    name=None
)
linear models with L1 + L2 regularization. As global optimization objective is
strongly-convex, the optimizer optimizes the dual objective at each step. The
optimizer applies each update one example at a time. Examples are sampled
uniformly, and the optimizer is learning rate free and enjoys linear convergence
rate.
Proximal Stochastic Dual Coordinate Ascent.
Shai Shalev-Shwartz, Tong Zhang. 2012
\[Loss Objective = \sum f_{i} (wx_{i}) + (l2 / 2) * |w|^2 + l1 * |w|\]
Adding vs. Averaging in Distributed Primal-Dual Optimization.
Chenxin Ma, Virginia Smith, Martin Jaggi, Michael I. Jordan,
Peter Richtarik, Martin Takac. 2015
Stochastic Dual Coordinate Ascent with Adaptive Probabilities.
Dominik Csiba, Zheng Qu, Peter Richtarik. 2015
| Args | 
|---|
| sparse_example_indices | A list of Tensorobjects with typeint64.
a list of vectors which contain example indices. | 
| sparse_feature_indices | A list with the same length as sparse_example_indicesofTensorobjects with typeint64.
a list of vectors which contain feature indices. | 
| sparse_feature_values | A list of Tensorobjects with typefloat32.
a list of vectors which contains feature value
associated with each feature group. | 
| dense_features | A list of Tensorobjects with typefloat32.
a list of matrices which contains the dense feature values. | 
| example_weights | A Tensorof typefloat32.
a vector which contains the weight associated with each
example. | 
| example_labels | A Tensorof typefloat32.
a vector which contains the label/target associated with each
example. | 
| sparse_indices | A list with the same length as sparse_example_indicesofTensorobjects with typeint64.
a list of vectors where each value is the indices which has
corresponding weights in sparse_weights. This field maybe omitted for the
dense approach. | 
| sparse_weights | A list with the same length as sparse_example_indicesofTensorobjects with typefloat32.
a list of vectors where each value is the weight associated with
a sparse feature group. | 
| dense_weights | A list with the same length as dense_featuresofTensorobjects with typefloat32.
a list of vectors where the values are the weights associated
with a dense feature group. | 
| example_state_data | A Tensorof typefloat32.
a list of vectors containing the example state data. | 
| loss_type | A stringfrom:"logistic_loss", "squared_loss", "hinge_loss", "smooth_hinge_loss", "poisson_loss".
Type of the primal loss. Currently SdcaSolver supports logistic,
squared and hinge losses. | 
| l1 | A float. Symmetric l1 regularization strength. | 
| l2 | A float. Symmetric l2 regularization strength. | 
| num_loss_partitions | An intthat is>= 1.
Number of partitions of the global loss function. | 
| num_inner_iterations | An intthat is>= 1.
Number of iterations per mini-batch. | 
| adaptative | An optional bool. Defaults toTrue.
Whether to use Adaptive SDCA for the inner loop. | 
| name | A name for the operation (optional). | 
| Returns | 
|---|
| A tuple of Tensorobjects (out_example_state_data, out_delta_sparse_weights, out_delta_dense_weights). | 
| out_example_state_data | A Tensorof typefloat32. | 
| out_delta_sparse_weights | A list with the same length as sparse_example_indicesofTensorobjects with typefloat32. | 
| out_delta_dense_weights | A list with the same length as dense_featuresofTensorobjects with typefloat32. |