| import streamlit as st |
| from annotated_text import annotated_text |
| import torch |
| from torch.utils.data import DataLoader |
|
|
| from .args_model_utils import tokenize_and_align_labels_with_pos_ner_dep, find_nearest_nugget_features, find_dep_depth |
| from .nugget_model_utils import CustomRobertaWithPOS |
| from .utils import get_content, get_event_nugget, get_idxs_from_text, get_entity_from_idx, list_of_pos_tags, event_args_list |
|
|
| from .event_nugget_predict import get_event_nuggets |
| import spacy |
| from transformers import AutoTokenizer |
| from datasets import load_dataset, Features, ClassLabel, Value, Sequence, Dataset |
| import os |
|
|
| os.environ["TOKENIZERS_PARALLELISM"] = "true" |
|
|
| def find_dep_depth(token): |
| depth = 0 |
| current_token = token |
| while current_token.head != current_token: |
| depth += 1 |
| current_token = current_token.head |
| return min(depth, 16) |
|
|
|
|
| nlp = spacy.load('en_core_web_sm') |
|
|
| pos_spacy_tag_list = ["ADJ","ADP","ADV","AUX","CCONJ","DET","INTJ","NOUN","NUM","PART","PRON","PROPN","PUNCT","SCONJ","SYM","VERB","SPACE","X"] |
| ner_spacy_tag_list = [bio + entity for entity in list(nlp.get_pipe('ner').labels) for bio in ["B-", "I-"]] + ["O"] |
| dep_spacy_tag_list = list(nlp.get_pipe("parser").labels) |
| event_nugget_tag_list = ["Databreach", "Ransom", "PatchVulnerability", "Phishing", "DiscoverVulnerability"] |
| arg_nugget_relative_pos_tag_list = ["before-same-sentence", "before-differ-sentence", "after-same-sentence", "after-differ-sentence"] |
|
|
| device = torch.device("cuda") if torch.cuda.is_available() else torch.device("cpu") |
|
|
| model_checkpoint = "ehsanaghaei/SecureBERT" |
| tokenizer = AutoTokenizer.from_pretrained(model_checkpoint, add_prefix_space=True) |
|
|
| |
| |
| |
| |
|
|
| """ |
| Function: create_dataloader(text_input) |
| Description: This function creates a DataLoader for processing text data, tokenizes it, and organizes it into batches. |
| Inputs: |
| - text_input: The input text to be processed. |
| Output: |
| - dataloader: A DataLoader for the tokenized and batched text data. |
| - tokenized_dataset_ner: The tokenized dataset used for training. |
| """ |
| def create_dataloader(model_nugget, text_input): |
|
|
| event_nuggets = get_event_nuggets(model_nugget, text_input) |
| doc = nlp(text_input) |
|
|
| content_as_words_emdash = [tok.text for tok in doc] |
| content_as_words_emdash = [word.replace("``", '"').replace("''", '"').replace("$", "") for word in content_as_words_emdash] |
| content_idx_dict = get_idxs_from_text(text_input, content_as_words_emdash) |
|
|
| data = [] |
|
|
| words = [] |
| arg_nugget_nearest_subtype = [] |
| arg_nugget_nearest_dist = [] |
| arg_nugget_relative_pos = [] |
|
|
| pos_spacy = [tok.pos_ for tok in doc] |
| ner_spacy = [ent.ent_iob_ + "-" + ent.ent_type_ if ent.ent_iob_ != "O" else ent.ent_iob_ for ent in doc] |
| dep_spacy = [tok.dep_ for tok in doc] |
| depth_spacy = [find_dep_depth(tok) for tok in doc] |
|
|
| for content_dict in content_idx_dict: |
| start_idx, end_idx = content_dict["start_idx"], content_dict["end_idx"] |
| nearest_subtype, nearest_dist, relative_pos = find_nearest_nugget_features(doc, content_dict["start_idx"], content_dict["end_idx"], event_nuggets) |
| words.append(content_dict["word"]) |
|
|
| arg_nugget_nearest_subtype.append(nearest_subtype) |
| arg_nugget_nearest_dist.append(nearest_dist) |
| arg_nugget_relative_pos.append(relative_pos) |
|
|
|
|
| content_token_len = len(tokenizer(words, truncation=False, is_split_into_words=True)["input_ids"]) |
| if content_token_len > tokenizer.model_max_length: |
| no_split = (content_token_len // tokenizer.model_max_length) + 2 |
| split_len = (len(words) // no_split) + 1 |
|
|
| last_id = 0 |
| threshold = split_len |
|
|
| for id, token in enumerate(words): |
| if token == "." and id > threshold: |
| data.append( |
| { |
| "tokens" : words[last_id : id + 1], |
| "pos_spacy" : pos_spacy[last_id : id + 1], |
| "ner_spacy" : ner_spacy[last_id : id + 1], |
| "dep_spacy" : dep_spacy[last_id : id + 1], |
| "depth_spacy" : depth_spacy[last_id : id + 1], |
| "nearest_nugget_subtype" : arg_nugget_nearest_subtype[last_id : id + 1], |
| "nearest_nugget_dist" : arg_nugget_nearest_dist[last_id : id + 1], |
| "arg_nugget_relative_pos" : arg_nugget_relative_pos[last_id : id + 1] |
| } |
| ) |
| last_id = id + 1 |
| threshold += split_len |
| data.append({"tokens" : words[last_id : ], |
| "pos_spacy" : pos_spacy[last_id : ], |
| "ner_spacy" : ner_spacy[last_id : ], |
| "dep_spacy" : dep_spacy[last_id : ], |
| "depth_spacy" : depth_spacy[last_id : ], |
| "nearest_nugget_subtype" : arg_nugget_nearest_subtype[last_id : ], |
| "nearest_nugget_dist" : arg_nugget_nearest_dist[last_id : ], |
| "arg_nugget_relative_pos" : arg_nugget_relative_pos[last_id : ]}) |
| else: |
| data.append( |
| { |
| "tokens" : words, |
| "pos_spacy" : pos_spacy, |
| "ner_spacy" : ner_spacy, |
| "dep_spacy" : dep_spacy, |
| "depth_spacy" : depth_spacy, |
| "nearest_nugget_subtype" : arg_nugget_nearest_subtype, |
| "nearest_nugget_dist" : arg_nugget_nearest_dist, |
| "arg_nugget_relative_pos" : arg_nugget_relative_pos |
| } |
| ) |
|
|
|
|
| ner_features = Features({'tokens' : Sequence(feature=Value(dtype='string', id=None), length=-1, id=None), |
| 'pos_spacy' : Sequence(feature=ClassLabel(num_classes=len(pos_spacy_tag_list), names=pos_spacy_tag_list, names_file=None, id=None), length=-1, id=None), |
| 'ner_spacy' : Sequence(feature=ClassLabel(num_classes=len(ner_spacy_tag_list), names=ner_spacy_tag_list, names_file=None, id=None), length=-1, id=None), |
| 'dep_spacy' : Sequence(feature=ClassLabel(num_classes=len(dep_spacy_tag_list), names=dep_spacy_tag_list, names_file=None, id=None), length=-1, id=None), |
| 'depth_spacy' : Sequence(feature=ClassLabel(num_classes=17, names= list(range(17)), names_file=None, id=None), length=-1, id=None), |
| 'nearest_nugget_subtype' : Sequence(feature=ClassLabel(num_classes=len(event_nugget_tag_list), names=event_nugget_tag_list, names_file=None, id=None), length=-1, id=None), |
| 'nearest_nugget_dist' : Sequence(feature=ClassLabel(num_classes=11, names=list(range(11)), names_file=None, id=None), length=-1, id=None), |
| 'arg_nugget_relative_pos' : Sequence(feature=ClassLabel(num_classes=len(arg_nugget_relative_pos_tag_list), names=arg_nugget_relative_pos_tag_list, names_file=None, id=None), length=-1, id=None), |
| }) |
|
|
| dataset = Dataset.from_list(data, features=ner_features) |
| tokenized_dataset_ner = dataset.map(tokenize_and_align_labels_with_pos_ner_dep, fn_kwargs={'tokenizer' : tokenizer}, batched=True, load_from_cache_file=False) |
| tokenized_dataset_ner = tokenized_dataset_ner.with_format("torch") |
|
|
| tokenized_dataset_ner = tokenized_dataset_ner.remove_columns("tokens") |
|
|
| batch_size = 4 |
| dataloader = DataLoader(tokenized_dataset_ner, batch_size=batch_size) |
| return dataloader, tokenized_dataset_ner |
|
|
| """ |
| Function: predict(dataloader) |
| Description: This function performs prediction on a given dataloader using a trained model for label classification. |
| Inputs: |
| - dataloader: A DataLoader containing the input data for prediction. |
| Output: |
| - predicted_label: A tensor containing the predicted labels for each input in the dataloader. |
| """ |
| def predict(dataloader): |
| predicted_label = [] |
| for batch in dataloader: |
| with torch.no_grad(): |
| logits = model_nugget(**batch) |
|
|
| batch_predicted_label = logits.argmax(-1) |
| predicted_label.append(batch_predicted_label) |
| return torch.cat(predicted_label, dim=-1) |
|
|
| """ |
| Function: show_annotations(text_input) |
| Description: This function displays annotated event arguments in the provided input text. |
| Inputs: |
| - text_input: The input text containing event arguments to be annotated and displayed. |
| Output: |
| - An interactive display of annotated event arguments within the input text. |
| """ |
| def show_annotations(text_input): |
| st.title("Event Arguments") |
|
|
| dataloader, tokenized_dataset_ner = create_dataloader(text_input) |
| predicted_label = predict(dataloader) |
|
|
| for idx, labels in enumerate(predicted_label): |
| token_mask = [token > 2 for token in tokenized_dataset_ner[idx]["input_ids"]] |
|
|
| tokens = tokenizer.convert_ids_to_tokens(tokenized_dataset_ner[idx]["input_ids"][token_mask], skip_special_tokens=True) |
| tokens = [token.replace("Ġ", "").replace("Ċ", "").replace("âĢĻ", "'") for token in tokens] |
|
|
| text = tokenizer.decode(tokenized_dataset_ner[idx]["input_ids"][token_mask]) |
| idxs = get_idxs_from_text(text, tokens) |
|
|
| labels = labels[token_mask] |
|
|
| annotated_text_list = [] |
| last_label = "" |
| cumulative_tokens = "" |
| last_id = 0 |
|
|
| for idx, label in zip(idxs, labels): |
| to_label = event_args_list[label] |
| label_short = to_label.split("-")[1] if "-" in to_label else to_label |
| if last_label == label_short: |
| cumulative_tokens += text[last_id : idx["end_idx"]] |
| last_id = idx["end_idx"] |
| else: |
| if last_label != "": |
| if last_label == "O": |
| annotated_text_list.append(cumulative_tokens) |
| else: |
| annotated_text_list.append((cumulative_tokens, last_label)) |
| last_label = label_short |
| cumulative_tokens = idx["word"] |
| last_id = idx["end_idx"] |
| if last_label == "O": |
| annotated_text_list.append(cumulative_tokens) |
| else: |
| annotated_text_list.append((cumulative_tokens, last_label)) |
|
|
| annotated_text(annotated_text_list) |
|
|
| """ |
| Function: get_event_args(text_input) |
| Description: This function extracts predicted event arguments (event nuggets) from the provided input text. |
| Inputs: |
| - text_input: The input text containing event nuggets to be extracted. |
| Output: |
| - predicted_event_nuggets: A list of dictionaries, each representing an extracted event nugget with start and end offsets, |
| subtype, and text content. |
| """ |
| def get_event_args(text_input): |
| dataloader, tokenized_dataset_ner = create_dataloader(text_input) |
| predicted_label = predict(dataloader) |
|
|
| predicted_event_nuggets = [] |
| text_length = 0 |
| for idx, labels in enumerate(predicted_label): |
| token_mask = [token > 2 for token in tokenized_dataset_ner[idx]["input_ids"]] |
|
|
| tokens = tokenizer.convert_ids_to_tokens(tokenized_dataset_ner[idx]["input_ids"][token_mask], skip_special_tokens=True) |
| tokens = [token.replace("Ġ", "").replace("Ċ", "").replace("âĢĻ", "'") for token in tokens] |
|
|
| text = tokenizer.decode(tokenized_dataset_ner[idx]["input_ids"][token_mask]) |
| idxs = get_idxs_from_text(text_input[text_length : ], tokens) |
|
|
| labels = labels[token_mask] |
|
|
| start_idx = 0 |
| end_idx = 0 |
| last_label = "" |
|
|
| for idx, label in zip(idxs, labels): |
| to_label = event_args_list[label] |
| if "-" in to_label: |
| label_split = to_label.split("-")[1] |
| else: |
| label_split = to_label |
| |
| if label_split == last_label: |
| end_idx = idx["end_idx"] |
| else: |
| if text_input[start_idx : end_idx] != "" and last_label != "O": |
| predicted_event_nuggets.append( |
| { |
| "startOffset" : text_length + start_idx, |
| "endOffset" : text_length + end_idx, |
| "subtype" : last_label, |
| "text" : text_input[text_length + start_idx : text_length + end_idx] |
| } |
| ) |
| start_idx = idx["start_idx"] |
| end_idx = idx["start_idx"] + len(idx["word"]) |
| last_label = label_split |
| text_length += idx["end_idx"] |
| return predicted_event_nuggets |
| |
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