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FRGCF / model /graph /LightGCN_1110.py
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'''
MixGCF的改进版。
能够自适应权重,muti-sampling。效果不是很好,指标都没上0.7。
'''
import torch
import torch.nn as nn
import pdb
class GraphConv(nn.Module):
"""
Graph Convolutional Network
"""
def __init__(self, n_hops, n_users, interact_mat,
edge_dropout_rate=0.5, mess_dropout_rate=0.1):
super(GraphConv, self).__init__()
self.interact_mat = interact_mat
self.n_users = n_users
self.n_hops = n_hops
self.edge_dropout_rate = edge_dropout_rate
self.mess_dropout_rate = mess_dropout_rate
self.dropout = nn.Dropout(p=mess_dropout_rate) # mess dropout
def _sparse_dropout(self, x, rate=0.5):
noise_shape = x._nnz()
random_tensor = rate
random_tensor += torch.rand(noise_shape).to(x.device)
dropout_mask = torch.floor(random_tensor).type(torch.bool)
i = x._indices()
v = x._values()
i = i[:, dropout_mask]
v = v[dropout_mask]
out = torch.sparse.FloatTensor(i, v, x.shape).to(x.device)
return out * (1. / (1 - rate))
def forward(self, user_embed, item_embed,
mess_dropout=True, edge_dropout=True):
# user_embed: [n_users, channel]
# item_embed: [n_items, channel]
# all_embed: [n_users+n_items, channel]
all_embed = torch.cat([user_embed, item_embed], dim=0)
agg_embed = all_embed
embs = []
for hop in range(self.n_hops):
interact_mat = self._sparse_dropout(self.interact_mat,
self.edge_dropout_rate) if edge_dropout \
else self.interact_mat
agg_embed = torch.sparse.mm(interact_mat, agg_embed)
if mess_dropout:
agg_embed = self.dropout(agg_embed)
# agg_embed = F.normalize(agg_embed)
embs.append(agg_embed)
embs = torch.stack(embs, dim=1) # [n_entity, n_hops+1, emb_size]
return embs[:self.n_users, :], embs[self.n_users:, :]
class LightGCN(nn.Module):
def __init__(self, data_config, args_config, adj_mat):
super(LightGCN, self).__init__()
self.n_users = data_config['n_users']
self.n_items = data_config['n_items']
self.adj_mat = adj_mat
self.decay = args_config.l2
self.emb_size = args_config.dim
self.context_hops = args_config.context_hops
self.mess_dropout = args_config.mess_dropout
self.mess_dropout_rate = args_config.mess_dropout_rate
self.edge_dropout = args_config.edge_dropout
self.edge_dropout_rate = args_config.edge_dropout_rate
self.pool = args_config.pool
self.n_negs = args_config.n_negs
self.ns = args_config.ns
self.K = args_config.K
self.last_epoch=0
self.device = torch.device("cuda:0") if args_config.cuda else torch.device("cpu")
self._init_weight()
self.user_embed = nn.Parameter(self.user_embed)
self.item_embed = nn.Parameter(self.item_embed)
self.gcn = self._init_model()
def _init_weight(self):
initializer = nn.init.xavier_uniform_
self.user_embed = initializer(torch.empty(self.n_users, self.emb_size))
self.item_embed = initializer(torch.empty(self.n_items, self.emb_size))
# [n_users+n_items, n_users+n_items]
self.sparse_norm_adj = self._convert_sp_mat_to_sp_tensor(self.adj_mat).to(self.device)
def _init_model(self):
return GraphConv(n_hops=self.context_hops,
n_users=self.n_users,
interact_mat=self.sparse_norm_adj,
edge_dropout_rate=self.edge_dropout_rate,
mess_dropout_rate=self.mess_dropout_rate)
def _convert_sp_mat_to_sp_tensor(self, X):
coo = X.tocoo()
i = torch.LongTensor([coo.row, coo.col])
v = torch.from_numpy(coo.data).float()
return torch.sparse.FloatTensor(i, v, coo.shape)
def forward(self, batch=None,epoch=0):
user = batch['users']
pos_item = batch['pos_items']
neg_item = batch['neg_items'] # [batch_size, n_negs * K]
# user_gcn_emb: [n_users, channel]
# item_gcn_emb: [n_users, channel]
user_gcn_emb, item_gcn_emb = self.gcn(self.user_embed,
self.item_embed,
edge_dropout=self.edge_dropout,
mess_dropout=self.mess_dropout)
if self.ns == 'rns': # n_negs = 1
neg_gcn_embs = item_gcn_emb[neg_item[:, :self.K]]
else:
neg_gcn_embs = []
for k in range(self.K):
neg_gcn_embs.append(self.negative_sampling(user_gcn_emb, item_gcn_emb,
user, neg_item[:, k*self.n_negs: (k+1)*self.n_negs],
pos_item,epoch))
neg_gcn_embs = torch.stack(neg_gcn_embs, dim=1)
return self.create_bpr_loss(user_gcn_emb[user], item_gcn_emb[pos_item], neg_gcn_embs)
def negative_sampling(self, user_gcn_emb, item_gcn_emb, user, neg_candidates, pos_item,epoch):
batch_size = user.shape[0]
s_e, p_e = user_gcn_emb[user], item_gcn_emb[pos_item] # [batch_size, n_hops+1, channel]
if self.pool != 'concat':
s_e = self.pooling(s_e).unsqueeze(dim=1)
"""positive mixing"""
seed = torch.rand(batch_size, 1, p_e.shape[1], 1).to(p_e.device) # (0, 1)
n_e = item_gcn_emb[neg_candidates] # [batch_size, n_negs, n_hops, channel]
"""mutil-negative mixing"""
scores_neg = (s_e.unsqueeze(dim=1) * n_e).sum(dim=-1) # [batch_size, n_negs, n_hops]
# scores_neg_ = scores_neg.sum(dim=1) # [batch_size, n_hops]
scores_pos_ = (s_e*p_e).sum(dim=-1) # [batch_size, n_hops]
total_scores = torch.exp(scores_neg).sum(dim=1) + torch.exp(scores_pos_)# [batch_size, n_hops]
total_scores = total_scores.unsqueeze(dim=1)
scores_neg = torch.exp(scores_neg)/total_scores # [batch_size, n_negs, n_hops]
weighted_n_e = scores_neg.unsqueeze(dim=-1)*n_e #[batch_size, n_negs, n_hops, channel]
weighted_pos_e = (1-scores_neg.sum(dim=1)).unsqueeze(dim=-1)
weighted_n_e = weighted_n_e.sum(dim=1)+weighted_pos_e*p_e
if not self.last_epoch==epoch:
with open("./weighted_pos.log" ,mode="a+",encoding="UTF-8")as file:
file.write(str(epoch)+"\n")
file.write(str(weighted_pos_e[0])+"\n")
self.last_epoch=epoch
return weighted_n_e
def pooling(self, embeddings):
# [-1, n_hops, channel]
if self.pool == 'mean':
return embeddings.mean(dim=1)
elif self.pool == 'sum':
return embeddings.sum(dim=1)
elif self.pool == 'concat':
return embeddings.view(embeddings.shape[0], -1)
else: # final
return embeddings[:, -1, :]
def generate(self, split=True):
user_gcn_emb, item_gcn_emb = self.gcn(self.user_embed,
self.item_embed,
edge_dropout=False,
mess_dropout=False)
user_gcn_emb, item_gcn_emb = self.pooling(user_gcn_emb), self.pooling(item_gcn_emb)
if split:
return user_gcn_emb, item_gcn_emb
else:
return torch.cat([user_gcn_emb, item_gcn_emb], dim=0)
def rating(self, u_g_embeddings=None, i_g_embeddings=None):
return torch.matmul(u_g_embeddings, i_g_embeddings.t())
def create_bpr_loss(self, user_gcn_emb, pos_gcn_embs, neg_gcn_embs):
# user_gcn_emb: [batch_size, n_hops+1, channel]
# pos_gcn_embs: [batch_size, n_hops+1, channel]
# neg_gcn_embs: [batch_size, K, n_hops+1, channel]
batch_size = user_gcn_emb.shape[0]
u_e = self.pooling(user_gcn_emb)
pos_e = self.pooling(pos_gcn_embs)
neg_e = self.pooling(neg_gcn_embs.view(-1, neg_gcn_embs.shape[2], neg_gcn_embs.shape[3])).view(batch_size, self.K, -1)
pos_scores = torch.sum(torch.mul(u_e, pos_e), axis=1)
neg_scores = torch.sum(torch.mul(u_e.unsqueeze(dim=1), neg_e), axis=-1) # [batch_size, K]
mf_loss = torch.mean(torch.log(1+torch.exp(neg_scores - pos_scores.unsqueeze(dim=1)).sum(dim=1)))
# cul regularizer
regularize = (torch.norm(user_gcn_emb[:, 2, :]) ** 2
+ torch.norm(pos_gcn_embs[:, 2, :]) ** 2
+ torch.norm(neg_gcn_embs[:, :, 2, :]) ** 2) / 2 # take hop=0
emb_loss = self.decay * regularize / batch_size
return mf_loss + emb_loss, mf_loss, emb_loss