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interpret.py
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interpret.py
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from run import initial_setup, get_parser as get_main_parser, set_random_seed
import os, json
from typing import Union
from exp.exp_long_term_forecasting import *
from exp.exp_classification import Exp_Classification
from utils.explainer import *
from exp.exp_interpret import Exp_Interpret, explainer_name_map
# Following disables pl logging for GPU
# https://github.com/Lightning-AI/pytorch-lightning/issues/3431
import logging
logging.getLogger("pytorch_lightning").setLevel(logging.WARNING)
def main(args):
initial_setup(args)
# print(args)
# Disable cudnn if using cuda accelerator throws error.
# Please see https://captum.ai/docs/faq#how-can-i-resolve-cudnn-rnn-backward-error-for-rnn-or-lstm-network
# args.use_gpu = False
if args.task_name == 'classification': Exp = Exp_Classification
else: Exp = Exp_Long_Term_Forecast
parent_seed = args.seed
np.random.seed(parent_seed)
experiment_seeds = np.random.randint(1e3, size=args.itrs)
original_itr = args.itr_no
for itr_no in range(1, args.itrs+1):
if (original_itr is not None) and original_itr != itr_no: continue
args.seed = int(experiment_seeds[itr_no-1])
print(f'\n>>>> itr_no: {itr_no}, seed: {args.seed} <<<<<<')
set_random_seed(args.seed)
args.itr_no = itr_no
exp = Exp(args) # set experiments
_, dataloader = exp._get_data(args.flag)
exp.load_best_model()
interpreter = Exp_Interpret(exp, dataloader)
interpreter.interpret(dataloader)
args.seed = parent_seed
config_filepath = os.path.join(args.result_path, stringify_setting(args), 'config_interpret.json')
args.seeds = [int(seed) for seed in experiment_seeds]
# with open(config_filepath, 'w') as output_file:
# json.dump(vars(args), output_file, indent=4)
return
def get_parser():
parser = get_main_parser()
parser.description = 'Interpret timeseries model'
parser.add_argument('--explainers', nargs='+', default=['feature_ablation'],
choices=list(explainer_name_map.keys()),
help='explaination method names. Gradient based explainers are not supported yet for regression')
parser.add_argument('--areas', nargs='*', type=float, default=[0.05, 0.075, 0.1, 0.15],
help='top k features to keep or mask during evaluation')
parser.add_argument('--baseline_mode', type=str, default='random',
choices=['random', 'aug', 'zero', 'mean', 'normal', 'gen'],
help='how to create the baselines for the interepretation methods')
parser.add_argument('--metrics', nargs='*', type=str, default=['mae', 'mse'],
help='interpretation evaluation metrics')
parser.add_argument('--overwrite', action='store_true', help='overwrite previous results')
parser.add_argument('--dump_attrs', action='store_true', help='dump raw attributes in torch file')
parser.add_argument('--disable_progress', action='store_true', help='disble progress bar')
return parser
if __name__ == '__main__':
parser = get_parser()
args = parser.parse_args()
main(args)