Semantic matching task is to judge whether the meanings of two input sentences are the same, which requires input sentence pairs and output 2 classification results (two sentences have the same or different meanings).
>>> test_data = [["后悔了吗","你有没有后悔"],
>>> ["打开自动横屏","开启移动数据"],
>>> ["我觉得你很聪明","你聪明我是这么觉得"]]
1
0
1
'1' indicates that the two sentences have the same meaning.
The sample data is in /examples/bert_semantic_matching/data/
You need to define the data loading process in train.py. For example:
>>> def read_file(data_path):
>>> src = []
>>> tgt = []
>>> ##TODO read data file to load src and tgt, for example:
>>> ## src = [["article_1_1", "article_1_2"], ["article_2_1", "artile_2_2"], ......]
>>> ## tgt = [1, 0, ......]
>>> ## no matter what data you use, you need to construct the right src and tgt.
>>> with open(data_path) as f:
>>> lines = f.readlines()
>>> for line in lines:
>>> line = line.split("\t")
>>> if len(line) == 3:
>>> sents_tgt.append(int(line[2]))
>>> sents_src.append([line[0], line[1]])
>>> return src,tgt
>>> from flagai.auto_model.auto_loader import AutoLoader
>>> # the model dir, which contains the 1.config.json, 2.pytorch_model.bin, 3.vocab.txt,
>>> # or we will download these files from the model hub to this dir.
>>> model_dir = "./state_dict/"
>>> # Autoloader can build the model and tokenizer automatically.
>>> # 'classification' is the task_name.
>>> auto_loader = AutoLoader("classification",
>>> model_name="RoBERTa-base-ch",
>>> model_dir=model_dir)
>>> model = auto_loader.get_model()
>>> tokenizer = auto_loader.get_tokenizer()
Then input this code in commandline to train:
python ./train.py
Modify the training configuration by this code:
>>> from flagai.trainer import Trainer
>>> import torch
>>> device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
>>> trainer = Trainer(env_type="pytorch",
>>> experiment_name="roberta-base-ch-semantic-matching",
>>> batch_size=8, gradient_accumulation_steps=1,
>>> lr = 1e-5,
>>> weight_decay=1e-3,
>>> epochs=10, log_interval=100, eval_interval=500,
>>> load_dir=None, pytorch_device=device,
>>> save_dir="checkpoints_semantic_matching",
>>> save_interval=1
>>> )
Divide the training set validation set and create the dataset:
>>> src, tgt = read_file(data_path=train_path)
>>> data_len = len(src)
>>> train_size = int(data_len * 0.9)
>>> train_src = src[: train_size]
>>> train_tgt = tgt[: train_size]
>>> val_src = src[train_size: ]
>>> val_tgt = tgt[train_size: ]
>>> train_dataset = BertClsDataset(train_src, train_tgt)
>>> val_dataset = BertClsDataset(val_src, val_tgt)
If you have already trained a model, in order to see the results more intuitively, rather than the accuracy of the validation set. You can run the generation file. First to modify the path of saved model.
>>> model_save_path = "./checkpoints_semantic_matching/9000/mp_rank_00_model_states.pt"
python ./generate.py
Then you can see the generation result.