# -*- coding:utf-8 -*-
"""
Author:
Weichen Shen,weichenswc@163.com
Reference:
[1] Qu Y, Cai H, Ren K, et al. Product-based neural networks for user response prediction[C]//Data Mining (ICDM), 2016 IEEE 16th International Conference on. IEEE, 2016: 1149-1154.(https://arxiv.org/pdf/1611.00144.pdf)
"""
import torch
import torch.nn as nn
from .basemodel import BaseModel
from ..inputs import combined_dnn_input
from ..layers import DNN, concat_fun, InnerProductLayer, OutterProductLayer
[docs]class PNN(BaseModel):
"""Instantiates the Product-based Neural Network architecture.
:param dnn_feature_columns: An iterable containing all the features used by deep part of the model.
:param dnn_hidden_units: list,list of positive integer or empty list, the layer number and units in each layer of deep net
:param l2_reg_embedding: float . L2 regularizer strength applied to embedding vector
:param l2_reg_dnn: float. L2 regularizer strength applied to DNN
:param init_std: float,to use as the initialize std of embedding vector
:param seed: integer ,to use as random seed.
:param dnn_dropout: float in [0,1), the probability we will drop out a given DNN coordinate.
:param dnn_activation: Activation function to use in DNN
:param use_inner: bool,whether use inner-product or not.
:param use_outter: bool,whether use outter-product or not.
:param kernel_type: str,kernel_type used in outter-product,can be ``'mat'`` , ``'vec'`` or ``'num'``
:param task: str, ``"binary"`` for binary logloss or ``"regression"`` for regression loss
:param device: str, ``"cpu"`` or ``"cuda:0"``
:param gpus: list of int or torch.device for multiple gpus. If None, run on `device`. `gpus[0]` should be the same gpu with `device`.
:return: A PyTorch model instance.
"""
def __init__(self, dnn_feature_columns, dnn_hidden_units=(128, 128), l2_reg_embedding=1e-5, l2_reg_dnn=0,
init_std=0.0001, seed=1024, dnn_dropout=0, dnn_activation='relu', use_inner=True, use_outter=False,
kernel_type='mat', task='binary', device='cpu', gpus=None):
super(PNN, self).__init__([], dnn_feature_columns, l2_reg_linear=0, l2_reg_embedding=l2_reg_embedding,
init_std=init_std, seed=seed, task=task, device=device, gpus=gpus)
if kernel_type not in ['mat', 'vec', 'num']:
raise ValueError("kernel_type must be mat,vec or num")
self.use_inner = use_inner
self.use_outter = use_outter
self.kernel_type = kernel_type
self.task = task
product_out_dim = 0
num_inputs = self.compute_input_dim(dnn_feature_columns, include_dense=False, feature_group=True)
num_pairs = int(num_inputs * (num_inputs - 1) / 2)
if self.use_inner:
product_out_dim += num_pairs
self.innerproduct = InnerProductLayer(device=device)
if self.use_outter:
product_out_dim += num_pairs
self.outterproduct = OutterProductLayer(
num_inputs, self.embedding_size, kernel_type=kernel_type, device=device)
self.dnn = DNN(product_out_dim + self.compute_input_dim(dnn_feature_columns), dnn_hidden_units,
activation=dnn_activation, l2_reg=l2_reg_dnn, dropout_rate=dnn_dropout, use_bn=False,
init_std=init_std, device=device)
self.dnn_linear = nn.Linear(
dnn_hidden_units[-1], 1, bias=False).to(device)
self.add_regularization_weight(
filter(lambda x: 'weight' in x[0] and 'bn' not in x[0], self.dnn.named_parameters()), l2=l2_reg_dnn)
self.add_regularization_weight(self.dnn_linear.weight, l2=l2_reg_dnn)
self.to(device)
[docs] def forward(self, X):
sparse_embedding_list, dense_value_list = self.input_from_feature_columns(X, self.dnn_feature_columns,
self.embedding_dict)
linear_signal = torch.flatten(
concat_fun(sparse_embedding_list), start_dim=1)
if self.use_inner:
inner_product = torch.flatten(
self.innerproduct(sparse_embedding_list), start_dim=1)
if self.use_outter:
outer_product = self.outterproduct(sparse_embedding_list)
if self.use_outter and self.use_inner:
product_layer = torch.cat(
[linear_signal, inner_product, outer_product], dim=1)
elif self.use_outter:
product_layer = torch.cat([linear_signal, outer_product], dim=1)
elif self.use_inner:
product_layer = torch.cat([linear_signal, inner_product], dim=1)
else:
product_layer = linear_signal
dnn_input = combined_dnn_input([product_layer], dense_value_list)
dnn_output = self.dnn(dnn_input)
dnn_logit = self.dnn_linear(dnn_output)
logit = dnn_logit
y_pred = self.out(logit)
return y_pred