from utils import ( write_jsonl_file, parse, ) import os topics = { 1: "Ordinary Life", 2: "School Life", 3: "Culture & Education", 4: "Attitude & Emotion", 5: "Relationship", 6: "Tourism", 7: "Health", 8: "Work", 9: "Politics", 10: "Finance", } emotions = { 0: "neutral", 1: "anger", 2: "disgust", 3: "fear", 4: "happiness", 5: "sadness", 6: "surprise", } acts = {1: "inform", 2: "question", 3: "directive", 4: "commissive"} def load_topics(args): text_file = os.path.join(args.input_dir, "dialogues_text.txt") topic_file = os.path.join(args.input_dir, "dialogues_topic.txt") text2topic = dict() with open(text_file, "r", encoding="utf-8") as text_reader, open( topic_file, "r", encoding="utf-8" ) as topic_reader: for line in text_reader: text = line.strip() topic = topics[int(topic_reader.readline().strip())] # if text in text2topic and text not in [ # "Can I help you ? __eou__ I hope so . I'm looking for some material for a paper I'm writing , and I'm not quite sure where to look . __eou__ I'll certainly try to help you . What topic is your paper on ? __eou__ My paper is on the influence of television on children . __eou__ There are several possible sources you might use for that topic . I suggest you use the computer and the computer will give you a list of every scientific journal that talks about children and television . __eou__ Thank you for you help . __eou__" # "Hey , Ann . You don't have a pen , do you ? __eou__ Sure , here you go . __eou__ Thanks . I don't suppose you have some paper , too . __eou__ Of course . There you are . __eou__ Thanks so much . I owe you one ." # ]: # print(text, topic, text2topic[text]) # assert text2topic[text] == topic text2topic[text] = topic return text2topic def preprocess(args, split, text2topic): input_dir = os.path.join(args.input_dir, split) text_file = os.path.join(input_dir, f"dialogues_{split}.txt") act_file = os.path.join(input_dir, f"dialogues_act_{split}.txt") emotion_file = os.path.join(input_dir, f"dialogues_emotion_{split}.txt") if split == "validation": split = "dev" outfile = os.path.join(args.output_dir, f"{split}.jsonl") processed_data = [] with open(text_file, "r", encoding="utf-8") as text_reader, open( act_file, "r", encoding="utf-8" ) as act_reader, open(emotion_file, "r", encoding="utf-8") as emotion_reader: for line in text_reader: text = line.strip() if text in text2topic: topic = text2topic[text] else: _text = "Sam , can we stop at this bicycle shop ? __eou__ Do you want to buy a new bicycle ? __eou__ Yes , and they have a sale on now . __eou__ What happened to your old one ? __eou__ I left it at my parent's house , but I need one here as well . __eou__ I've been using Jim's old bike but he needs it back . __eou__ Let's go then . __eou__ Look at this mountain bike . It is only £ 330 . Do you like it ? __eou__ I prefer something like this one - a touring bike , but it is more expensive . __eou__ How much is it ? __eou__ The price on the tag says £ 565 but maybe you can get a discount . __eou__ OK , let's go and ask . __eou__" topic = text2topic[_text] utterances = text.split("__eou__") assert not utterances[-1] utterances = utterances[:-1] _acts = list( map(lambda x: acts[int(x)], act_reader.readline().strip().split()) ) _emotions = list( map( lambda x: emotions[int(x)], emotion_reader.readline().strip().split(), ) ) dialogue = { "turn": "multi", "locale": "en", "domain": [topic], "dialog": [], "knowledge": {"type": "list", "value": sorted(emotions.values())}, } assert len(utterances) == len(_acts) and len(utterances) == len( _emotions ), f"{utterances}\n{_acts}\n{_emotions}" roles = ["ROLE1", "ROLE2"] for idx, utterance in enumerate(utterances): assert utterance dialogue["dialog"].append( { "roles": [roles[idx % 2]], "utterance": utterance, "active_intents": [_acts[idx]], "emotions": [{"emotion": _emotions[idx]}], } ) processed_data.append(dialogue) write_jsonl_file(processed_data, outfile) if __name__ == "__main__": args = parse() text2topic = load_topics(args) preprocess(args, "train", text2topic) preprocess(args, "validation", text2topic) preprocess(args, "test", text2topic)