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memnet.py
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memnet.py
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# -*- coding: utf-8 -*-
# file: memnet.py
# author: songyouwei <[email protected]>
# Copyright (C) 2018. All Rights Reserved.
from layers.attention import Attention
import torch
import torch.nn as nn
from layers.squeeze_embedding import SqueezeEmbedding
class MemNet(nn.Module):
def locationed_memory(self, memory, memory_len):
# here we just simply calculate the location vector in Model2's manner
batch_size = memory.shape[0]
seq_len = memory.shape[1]
memory_len = memory_len.cpu().numpy()
weight = [[] for i in range(batch_size)]
for i in range(batch_size):
for idx in range(memory_len[i]):
weight[i].append(1-float(idx+1)/memory_len[i])
for idx in range(memory_len[i], seq_len):
weight[i].append(1)
weight = torch.tensor(weight).to(self.opt.device)
memory = weight.unsqueeze(2)*memory
return memory
def __init__(self, embedding_matrix, opt):
super(MemNet, self).__init__()
self.opt = opt
self.embed = nn.Embedding.from_pretrained(torch.tensor(embedding_matrix, dtype=torch.float))
self.squeeze_embedding = SqueezeEmbedding(batch_first=True)
self.attention = Attention(opt.embed_dim, score_function='mlp')
self.x_linear = nn.Linear(opt.embed_dim, opt.embed_dim)
self.dense = nn.Linear(opt.embed_dim, opt.polarities_dim)
def forward(self, inputs):
text_raw_without_aspect_indices, aspect_indices = inputs[0], inputs[1]
memory_len = torch.sum(text_raw_without_aspect_indices != 0, dim=-1)
aspect_len = torch.sum(aspect_indices != 0, dim=-1)
nonzeros_aspect = torch.tensor(aspect_len, dtype=torch.float).to(self.opt.device)
memory = self.embed(text_raw_without_aspect_indices)
memory = self.squeeze_embedding(memory, memory_len)
# memory = self.locationed_memory(memory, memory_len)
aspect = self.embed(aspect_indices)
aspect = torch.sum(aspect, dim=1)
aspect = torch.div(aspect, nonzeros_aspect.view(nonzeros_aspect.size(0), 1))
x = aspect.unsqueeze(dim=1)
for _ in range(self.opt.hops):
x = self.x_linear(x)
out_at, _ = self.attention(memory, x)
x = out_at + x
x = x.view(x.size(0), -1)
out = self.dense(x)
return out