LongLAT / HiLATmain /models /modeling.py
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import collections
import logging
import torch
from torch.nn import BCEWithLogitsLoss, Dropout, Linear
from transformers import AutoModel, XLNetModel
from huggingface_hub import PyTorchModelHubMixin
from LongLAT.models.utils import initial_code_title_vectors
logger = logging.getLogger("lwat")
class CodingModelConfig:
def __init__(self,
transformer_model_name_or_path,
transformer_tokenizer_name,
transformer_layer_update_strategy,
num_chunks,
max_seq_length,
dropout,
dropout_att,
d_model,
label_dictionary,
num_labels,
use_code_representation,
code_max_seq_length,
code_batch_size,
multi_head_att,
chunk_att,
linear_init_mean,
linear_init_std,
document_pooling_strategy,
multi_head_chunk_attention,
num_hidden_layers):
super(CodingModelConfig, self).__init__()
self.transformer_model_name_or_path = transformer_model_name_or_path
self.transformer_tokenizer_name = transformer_tokenizer_name
self.transformer_layer_update_strategy = transformer_layer_update_strategy
self.num_chunks = num_chunks
self.max_seq_length = max_seq_length
self.dropout = dropout
self.dropout_att = dropout_att
self.d_model = d_model
# labels_dictionary is a dataframe with columns: icd9_code, long_title
self.label_dictionary = label_dictionary
self.num_labels = num_labels
self.use_code_representation = use_code_representation
self.code_max_seq_length = code_max_seq_length
self.code_batch_size = code_batch_size
self.multi_head_att = multi_head_att
self.chunk_att = chunk_att
self.linear_init_mean = linear_init_mean
self.linear_init_std = linear_init_std
self.document_pooling_strategy = document_pooling_strategy
self.multi_head_chunk_attention = multi_head_chunk_attention
self.num_hidden_layers = num_hidden_layers
class LableWiseAttentionLayer(torch.nn.Module):
def __init__(self, coding_model_config, args):
super(LableWiseAttentionLayer, self).__init__()
self.config = coding_model_config
self.args = args
# layers
self.l1_linear = torch.nn.Linear(self.config.d_model,
self.config.d_model, bias=False)
self.tanh = torch.nn.Tanh()
self.l2_linear = torch.nn.Linear(self.config.d_model, self.config.num_labels, bias=False)
self.softmax = torch.nn.Softmax(dim=1)
# Mean pooling last hidden state of code title from transformer model as the initial code vectors
self._init_linear_weights(mean=self.config.linear_init_mean, std=self.config.linear_init_std)
def _init_linear_weights(self, mean, std):
# normalize the l1 weights
torch.nn.init.normal_(self.l1_linear.weight, mean, std)
if self.l1_linear.bias is not None:
self.l1_linear.bias.data.fill_(0)
# initialize the l2
if self.config.use_code_representation:
code_vectors = initial_code_title_vectors(self.config.label_dictionary,
self.config.transformer_model_name_or_path,
self.config.transformer_tokenizer_name
if self.config.transformer_tokenizer_name
else self.config.transformer_model_name_or_path,
self.config.code_max_seq_length,
self.config.code_batch_size,
self.config.d_model,
self.args.device)
self.l2_linear.weight = torch.nn.Parameter(code_vectors, requires_grad=True)
torch.nn.init.normal_(self.l2_linear.weight, mean, std)
if self.l2_linear.bias is not None:
self.l2_linear.bias.data.fill_(0)
def forward(self, x):
# input: (batch_size, max_seq_length, transformer_hidden_size)
# output: (batch_size, max_seq_length, transformer_hidden_size)
# Z = Tan(WH)
l1_output = self.tanh(self.l1_linear(x))
# softmax(UZ)
# l2_linear output shape: (batch_size, max_seq_length, num_labels)
# attention_weight shape: (batch_size, num_labels, max_seq_length)
attention_weight = self.softmax(self.l2_linear(l1_output)).transpose(1, 2)
# attention_output shpae: (batch_size, num_labels, transformer_hidden_size)
attention_output = torch.matmul(attention_weight, x)
return attention_output, attention_weight
class ChunkAttentionLayer(torch.nn.Module):
def __init__(self, coding_model_config, args):
super(ChunkAttentionLayer, self).__init__()
self.config = coding_model_config
self.args = args
# layers
self.l1_linear = torch.nn.Linear(self.config.d_model,
self.config.d_model, bias=False)
self.tanh = torch.nn.Tanh()
self.l2_linear = torch.nn.Linear(self.config.d_model, 1, bias=False)
self.softmax = torch.nn.Softmax(dim=1)
self._init_linear_weights(mean=self.config.linear_init_mean, std=self.config.linear_init_std)
def _init_linear_weights(self, mean, std):
# initialize the l1
torch.nn.init.normal_(self.l1_linear.weight, mean, std)
if self.l1_linear.bias is not None:
self.l1_linear.bias.data.fill_(0)
# initialize the l2
torch.nn.init.normal_(self.l2_linear.weight, mean, std)
if self.l2_linear.bias is not None:
self.l2_linear.bias.data.fill_(0)
def forward(self, x):
# input: (batch_size, num_chunks, transformer_hidden_size)
# output: (batch_size, num_chunks, transformer_hidden_size)
# Z = Tan(WH)
l1_output = self.tanh(self.l1_linear(x))
# softmax(UZ)
# l2_linear output shape: (batch_size, num_chunks, 1)
# attention_weight shape: (batch_size, 1, num_chunks)
attention_weight = self.softmax(self.l2_linear(l1_output)).transpose(1, 2)
# attention_output shpae: (batch_size, 1, transformer_hidden_size)
attention_output = torch.matmul(attention_weight, x)
return attention_output, attention_weight
# define the model class
class CodingModel(torch.nn.Module, PyTorchModelHubMixin):
def __init__(self, coding_model_config, args, **kwargs):
super(CodingModel, self).__init__()
self.coding_model_config = coding_model_config
self.args = args
# layers
self.transformer_layer = AutoModel.from_pretrained(self.coding_model_config.transformer_model_name_or_path)
if isinstance(self.transformer_layer, XLNetModel):
self.transformer_layer.config.use_mems_eval = False
self.dropout = Dropout(p=self.coding_model_config.dropout)
if self.coding_model_config.multi_head_att:
# initial multi head attention according to the num_chunks
self.label_wise_attention_layer = torch.nn.ModuleList(
[LableWiseAttentionLayer(coding_model_config, args)
for _ in range(self.coding_model_config.num_chunks)])
else:
self.label_wise_attention_layer = LableWiseAttentionLayer(coding_model_config, args)
self.dropout_att = Dropout(p=self.coding_model_config.dropout_att)
# initial chunk attention
if self.coding_model_config.chunk_att:
if self.coding_model_config.multi_head_chunk_attention:
self.chunk_attention_layer = torch.nn.ModuleList([ChunkAttentionLayer(coding_model_config, args)
for _ in range(self.coding_model_config.num_labels)])
else:
self.chunk_attention_layer = ChunkAttentionLayer(coding_model_config, args)
self.classifier_layer = Linear(self.coding_model_config.d_model,
self.coding_model_config.num_labels)
else:
if self.coding_model_config.document_pooling_strategy == "flat":
self.classifier_layer = Linear(self.coding_model_config.num_chunks * self.coding_model_config.d_model,
self.coding_model_config.num_labels)
else: # max or mean pooling
self.classifier_layer = Linear(self.coding_model_config.d_model,
self.coding_model_config.num_labels)
self.sigmoid = torch.nn.Sigmoid()
if self.coding_model_config.transformer_layer_update_strategy == "no":
self.freeze_all_transformer_layers()
elif self.coding_model_config.transformer_layer_update_strategy == "last":
self.freeze_all_transformer_layers()
self.unfreeze_transformer_last_layers()
# initialize the weights of classifier
self._init_linear_weights(mean=self.coding_model_config.linear_init_mean, std=self.coding_model_config.linear_init_std)
def _init_linear_weights(self, mean, std):
torch.nn.init.normal_(self.classifier_layer.weight, mean, std)
def forward(self, input_ids=None, attention_mask=None, token_type_ids=None, targets=None):
# input ids/mask/type_ids shape: (batch_size, num_chunks, max_seq_length)
# labels shape: (batch_size, num_labels)
transformer_output = []
# pass chunk by chunk into transformer layer in the batches.
# input (batch_size, sequence_length)
for i in range(self.coding_model_config.num_chunks):
l1_output = self.transformer_layer(input_ids=input_ids[:, i, :],
attention_mask=attention_mask[:, i, :],
token_type_ids=token_type_ids[:, i, :])
# output hidden state shape: (batch_size, sequence_length, hidden_size)
transformer_output.append(l1_output[0])
# transpose back chunk and batch size dimensions
transformer_output = torch.stack(transformer_output)
transformer_output = transformer_output.transpose(0, 1)
# dropout transformer output
l2_dropout = self.dropout(transformer_output)
# Label-wise attention layers
# output: (batch_size, num_chunks, num_labels, hidden_size)
attention_output = []
attention_weights = []
for i in range(self.coding_model_config.num_chunks):
# input: (batch_size, max_seq_length, transformer_hidden_size)
if self.coding_model_config.multi_head_att:
attention_layer = self.label_wise_attention_layer[i]
else:
attention_layer = self.label_wise_attention_layer
l3_attention, attention_weight = attention_layer(l2_dropout[:, i, :])
# l3_attention shape: (batch_size, num_labels, hidden_size)
# attention_weight: (batch_size, num_labels, max_seq_length)
attention_output.append(l3_attention)
attention_weights.append(attention_weight)
attention_output = torch.stack(attention_output)
attention_output = attention_output.transpose(0, 1)
attention_weights = torch.stack(attention_weights)
attention_weights = attention_weights.transpose(0, 1)
l3_dropout = self.dropout_att(attention_output)
if self.coding_model_config.chunk_att:
# Chunk attention layers
# output: (batch_size, num_labels, hidden_size)
chunk_attention_output = []
chunk_attention_weights = []
for i in range(self.coding_model_config.num_labels):
if self.coding_model_config.multi_head_chunk_attention:
chunk_attention = self.chunk_attention_layer[i]
else:
chunk_attention = self.chunk_attention_layer
l4_chunk_attention, l4_chunk_attention_weights = chunk_attention(l3_dropout[:, :, i])
chunk_attention_output.append(l4_chunk_attention.squeeze(dim=1))
chunk_attention_weights.append(l4_chunk_attention_weights.squeeze(dim=1))
chunk_attention_output = torch.stack(chunk_attention_output)
chunk_attention_output = chunk_attention_output.transpose(0, 1)
chunk_attention_weights = torch.stack(chunk_attention_weights)
chunk_attention_weights = chunk_attention_weights.transpose(0, 1)
# output shape: (batch_size, num_labels, hidden_size)
l4_dropout = self.dropout_att(chunk_attention_output)
else:
# output shape: (batch_size, num_labels, hidden_size*num_chunks)
l4_dropout = l3_dropout.transpose(1, 2)
if self.coding_model_config.document_pooling_strategy == "flat":
# Flatten layer. concatenate representation by labels
l4_dropout = torch.flatten(l4_dropout, start_dim=2)
elif self.coding_model_config.document_pooling_strategy == "max":
l4_dropout = torch.amax(l4_dropout, 2)
elif self.coding_model_config.document_pooling_strategy == "mean":
l4_dropout = torch.mean(l4_dropout, 2)
else:
raise ValueError("Not supported pooling strategy")
# classifier layer
# each code has a binary linear formula
logits = self.classifier_layer.weight.mul(l4_dropout).sum(dim=2).add(self.classifier_layer.bias)
loss_fct = BCEWithLogitsLoss()
loss = loss_fct(logits, targets)
return {
"loss": loss,
"logits": logits,
"label_attention_weights": attention_weights,
"chunk_attention_weights": chunk_attention_weights if self.coding_model_config.chunk_att else []
}
def freeze_all_transformer_layers(self):
"""
Freeze all layer weight parameters. They will not be updated during training.
"""
for param in self.transformer_layer.parameters():
param.requires_grad = False
def unfreeze_all_transformer_layers(self):
"""
Unfreeze all layers weight parameters. They will be updated during training.
"""
for param in self.transformer_layer.parameters():
param.requires_grad = True
def unfreeze_transformer_last_layers(self):
for name, param in self.transformer_layer.named_parameters():
if "layer.11" in name or "pooler" in name:
param.requires_grad = True