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Diaformer

Diaformer is an efficient model for automatic diagnosis via symptoms sequence generation. It takes the sequence of symptoms as input, and predicts the inquiry symptoms in the way of sequence generation.

Figure 1: Illustration of symptom attention framework.

Requirements

Our experiments are conducted on Python 3.8 and Pytorch == 1.8.0. The main requirements are:

  • transformers==2.1.1
  • torch
  • numpy
  • tqdm
  • sklearn
  • keras
  • boto3

In the root directory, run following command to install the required libraries.

pip install -r requirement.txt

Usage

  1. Download data

    Download the datasets, then decompress them and put them in the corrsponding documents in \data. For example, put the data of Synthetic Dataset under data/synthetic_dataset.

    The dataset can be downloaded as following links:

  2. Build data

    Switch to the corresponding directory of the dataset and just run preprocess.py to preprocess data and generate a vocabulary of symptoms.

  3. Train and test

    Train and test models by the follow commands.

    Diaformer

    # Train and test on Diaformer
    # Run on MuZhi dataset
    python Diaformer.py --dataset_path data/muzhi_dataset --batch_size 16 --lr 5e-5 --min_probability 0.009 --max_turn 20 --start_test 10 
    
    # Run on Dxy dataset
    python Diaformer.py --dataset_path data/dxy_dataset --batch_size 16 --lr 5e-5 --min_probability 0.012 --max_turn 20 --start_test 10 
    
    # Run on Synthetic dataset
    python Diaformer.py --dataset_path data/synthetic_dataset --batch_size 16 --lr 5e-5 --min_probability 0.01 --max_turn 20 --start_test 10

    Diaformer_GPT2

    # Train and test on GPT2 variant of Diaformer
    python GPT2_variant.py --dataset_path data/synthetic_dataset --batch_size 16 --lr 5e-5 --min_probability 0.01 --max_turn 20 --start_test 10

    Diaformer_UniLM

    # Train and test on UniLM variant of Diaformer
    python UniLM_variant.py --dataset_path data/synthetic_dataset --batch_size 16 --lr 5e-5 --min_probability 0.01 --max_turn 20 --start_test 10

    Ablation study

    # run ablation study
    # w/o Sequence Shuffle
    python Diaformer.py --dataset_path data/synthetic_dataset --batch_size 16 --lr 5e-5 --min_probability 0.01 --max_turn 20 --start_test 10 --no_sequence_shuffle
    
    # w/o Synchronous Learning
    python Diaformer.py --dataset_path data/synthetic_dataset --batch_size 16 --lr 5e-5 --min_probability 0.01 --max_turn 20 --start_test 10 --no_synchronous_learning
    
    # w/o Repeated Sequence
    python Diaformer.py --dataset_path data/synthetic_dataset --batch_size 16 --lr 5e-5 --min_probability 0.01 --max_turn 20 --start_test 10 --no_repeated_sequence

    Generative inference

    # save the model
    python Diaformer.py --dataset_path data/synthetic_dataset --batch_size 16 --lr 5e-5 --min_probability 0.01 --max_turn 20 --start_test 10 --model_output_path models
    # use the trained model to output the results
    python predict.py --dataset_path data/synthetic_dataset --min_probability 0.01 --max_turn 20 --pretrained_model models/ --result_output_path results.json

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Diaformer: Automatic Diagnosis via Symptoms Sequence Generation

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