import torch.nn as nn from .bert import BERT class BERTLM(nn.Module): """ BERT Language Model Next Sentence Prediction Model + Masked Language Model """ def __init__(self, bert: BERT, vocab_size): """ :param bert: BERT model which should be trained :param vocab_size: total vocab size for masked_lm """ super().__init__() self.bert = bert self.next_sentence = NextSentencePrediction(self.bert.hidden) self.mask_lm = MaskedLanguageModel(self.bert.hidden, vocab_size) def forward(self, x, segment_label): x = self.bert(x, segment_label) return self.next_sentence(x), self.mask_lm(x) class NextSentencePrediction(nn.Module): """ 2-class classification model : is_next, is_not_next """ def __init__(self, hidden): """ :param hidden: BERT model output size """ super().__init__() self.linear = nn.Linear(hidden, 2) self.softmax = nn.LogSoftmax(dim=-1) def forward(self, x): return self.softmax(self.linear(x[:, 0])) class MaskedLanguageModel(nn.Module): """ predicting origin token from masked input sequence n-class classification problem, n-class = vocab_size """ def __init__(self, hidden, vocab_size): """ :param hidden: output size of BERT model :param vocab_size: total vocab size """ super().__init__() self.linear = nn.Linear(hidden, vocab_size) self.softmax = nn.LogSoftmax(dim=-1) def forward(self, x): return self.softmax(self.linear(x))