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46 lines
1.6 KiB
Python
46 lines
1.6 KiB
Python
import torch
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import torch.nn as nn
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import torch.nn.functional as F
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from torch.nn import init
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"""
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u_embedding: Embedding for center word.
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v_embedding: Embedding for neighbor words.
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"""
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class SkipGramModel(nn.Module):
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def __init__(self, emb_size, emb_dimension):
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super(SkipGramModel, self).__init__()
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self.emb_size = emb_size
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self.emb_dimension = emb_dimension
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self.u_embeddings = nn.Embedding(emb_size, emb_dimension, sparse=True)
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self.v_embeddings = nn.Embedding(emb_size, emb_dimension, sparse=True)
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initrange = 1.0 / self.emb_dimension
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init.uniform_(self.u_embeddings.weight.data, -initrange, initrange)
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init.constant_(self.v_embeddings.weight.data, 0)
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def forward(self, pos_u, pos_v, neg_v):
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emb_u = self.u_embeddings(pos_u)
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emb_v = self.v_embeddings(pos_v)
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emb_neg_v = self.v_embeddings(neg_v)
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score = torch.sum(torch.mul(emb_u, emb_v), dim=1)
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score = torch.clamp(score, max=10, min=-10)
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score = -F.logsigmoid(score)
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neg_score = torch.bmm(emb_neg_v, emb_u.unsqueeze(2)).squeeze()
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neg_score = torch.clamp(neg_score, max=10, min=-10)
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neg_score = -torch.sum(F.logsigmoid(-neg_score), dim=1)
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return torch.mean(score + neg_score)
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def save_embedding(self, id2word, file_name):
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embedding = self.u_embeddings.weight.cpu().data.numpy()
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with open(file_name, "w") as f:
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f.write("%d %d\n" % (len(id2word), self.emb_dimension))
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for wid, w in id2word.items():
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e = " ".join(map(lambda x: str(x), embedding[wid]))
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f.write("%s %s\n" % (w, e))
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