Source code for claf.data.dataset.bert.regression


import json
from overrides import overrides

from claf.data import utils
from claf.data.collate import PadCollator
from claf.data.dataset.base import DatasetBase


[docs]class RegressionBertDataset(DatasetBase): """ Dataset for Regression using BERT * Args: batch: Batch DTO (claf.data.batch) * Kwargs: helper: helper from data_reader """ def __init__(self, batch, vocab, helper=None): super(RegressionBertDataset, self).__init__() self.name = "reg_bert" self.vocab = vocab self.helper = helper # Features self.bert_input_idx = [feature["bert_input"] for feature in batch.features] SEP_token = self.helper.get("sep_token", "[SEP]") self.token_type_idx = utils.make_bert_token_types(self.bert_input_idx, SEP_token=SEP_token) self.features = [self.bert_input_idx, self.token_type_idx] # for lazy evaluation # Labels self.data_ids = {data_index: label["id"] for (data_index, label) in enumerate(batch.labels)} self.data_indices = list(self.data_ids.keys()) self.labels = { label["id"]: { "score": label["score"], } for label in batch.labels } self.label_scores = [label["score"] for label in batch.labels]
[docs] @overrides def collate_fn(self, cuda_device_id=None): """ collate: indexed features and labels -> tensor """ collator = PadCollator(cuda_device_id=cuda_device_id, pad_value=self.vocab.pad_index) def make_tensor_fn(data): data_idxs, bert_input_idxs, token_type_idxs, label_scores = zip(*data) features = { "bert_input": utils.transpose(bert_input_idxs, skip_keys=["text"]), "token_type": utils.transpose(token_type_idxs, skip_keys=["text"]), } labels = { "data_idx": data_idxs, "score": label_scores, } return collator(features, labels) return make_tensor_fn
@overrides def __getitem__(self, index): self.lazy_evaluation(index) return ( self.data_indices[index], self.bert_input_idx[index], self.token_type_idx[index], self.label_scores[index], ) def __len__(self): return len(self.data_ids) def __repr__(self): dataset_properties = { "name": self.name, "total_count": self.__len__(), "sequence_maxlen": self.sequence_maxlen, } return json.dumps(dataset_properties, indent=4) @property def sequence_maxlen(self): return self._get_feature_maxlen(self.bert_input_idx)
[docs] def get_id(self, data_index): return self.data_ids[data_index]
[docs] @overrides def get_ground_truth(self, data_id): return self.labels[data_id]