| import torch |
| from transformers.models.bert.modeling_bert import BertModel, BertPreTrainedModel |
| from torch import nn |
| from itertools import chain |
| from torch.nn import MSELoss, CrossEntropyLoss |
| from cleantext import clean |
| from num2words import num2words |
| import re |
| import string |
|
|
| punct_chars = list((set(string.punctuation) | {'’', '‘', '–', '—', '~', '|', '“', '”', '…', "'", "`", '_'})) |
| punct_chars.sort() |
| punctuation = ''.join(punct_chars) |
| replace = re.compile('[%s]' % re.escape(punctuation)) |
|
|
| MATH_PREFIXES = [ |
| "sum", |
| "arc", |
| "mass", |
| "digit", |
| "graph", |
| "liter", |
| "gram", |
| "add", |
| "angle", |
| "scale", |
| "data", |
| "array", |
| "ruler", |
| "meter", |
| "total", |
| "unit", |
| "prism", |
| "median", |
| "ratio", |
| "area", |
| ] |
|
|
| MATH_WORDS = [ |
| "absolute value", |
| "area", |
| "average", |
| "base of", |
| "box plot", |
| "categorical", |
| "coefficient", |
| "common factor", |
| "common multiple", |
| "compose", |
| "coordinate", |
| "cubed", |
| "decompose", |
| "dependent variable", |
| "distribution", |
| "dot plot", |
| "double number line diagram", |
| "equivalent", |
| "equivalent expression", |
| "ratio", |
| "exponent", |
| "frequency", |
| "greatest common factor", |
| "gcd", |
| "height of", |
| "histogram", |
| "independent variable", |
| "interquartile range", |
| "iqr", |
| "least common multiple", |
| "long division", |
| "mean absolute deviation", |
| "median", |
| "negative number", |
| "opposite vertex", |
| "parallelogram", |
| "percent", |
| "polygon", |
| "polyhedron", |
| "positive number", |
| "prism", |
| "pyramid", |
| "quadrant", |
| "quadrilateral", |
| "quartile", |
| "rational number", |
| "reciprocal", |
| "equality", |
| "inequality", |
| "squared", |
| "statistic", |
| "surface area", |
| "identity property", |
| "addend", |
| "unit", |
| "number sentence", |
| "make ten", |
| "take from ten", |
| "number bond", |
| "total", |
| "estimate", |
| "hashmark", |
| "meter", |
| "number line", |
| "ruler", |
| "centimeter", |
| "base ten", |
| "expanded form", |
| "hundred", |
| "thousand", |
| "place value", |
| "number disk", |
| "standard form", |
| "unit form", |
| "word form", |
| "tens place", |
| "algorithm", |
| "equation", |
| "simplif", |
| "addition", |
| "subtract", |
| "array", |
| "even number", |
| "odd number", |
| "repeated addition", |
| "tessellat", |
| "whole number", |
| "number path", |
| "rectangle", |
| "square", |
| "bar graph", |
| "data", |
| "degree", |
| "line plot", |
| "picture graph", |
| "scale", |
| "survey", |
| "thermometer", |
| "estimat", |
| "tape diagram", |
| "value", |
| "analog", |
| "angle", |
| "parallel", |
| "partition", |
| "pentagon", |
| "right angle", |
| "cube", |
| "digital", |
| "quarter of", |
| "tangram", |
| "circle", |
| "hexagon", |
| "half circle", |
| "half-circle", |
| "quarter circle", |
| "quarter-circle", |
| "semicircle", |
| "semi-circle", |
| "rectang", |
| "rhombus", |
| "trapezoid", |
| "triangle", |
| "commutative", |
| "equal group", |
| "distributive", |
| "divide", |
| "division", |
| "multipl", |
| "parentheses", |
| "quotient", |
| "rotate", |
| "unknown", |
| "add", |
| "capacity", |
| "continuous", |
| "endpoint", |
| "gram", |
| "interval", |
| "kilogram", |
| "volume", |
| "liter", |
| "milliliter", |
| "approximate", |
| "area model", |
| "square unit", |
| "unit square", |
| "geometr", |
| "equivalent fraction", |
| "fraction form", |
| "fractional unit", |
| "unit fraction", |
| "unit interval", |
| "measur", |
| "graph", |
| "scaled graph", |
| "diagonal", |
| "perimeter", |
| "regular polygon", |
| "tessellate", |
| "tetromino", |
| "heptagon", |
| "octagon", |
| "digit", |
| "expression", |
| "sum", |
| "kilometer", |
| "mass", |
| "mixed unit", |
| "length", |
| "measure", |
| "simplify", |
| "associative", |
| "composite", |
| "divisible", |
| "divisor", |
| "partial product", |
| "prime number", |
| "remainder", |
| "acute", |
| "arc", |
| "collinear", |
| "equilateral", |
| "intersect", |
| "isosceles", |
| "symmetry", |
| "line segment", |
| "line", |
| "obtuse", |
| "perpendicular", |
| "protractor", |
| "scalene", |
| "straight angle", |
| "supplementary angle", |
| "vertex", |
| "common denominator", |
| "denominator", |
| "fraction", |
| "mixed number", |
| "numerator", |
| "whole", |
| "decimal expanded form", |
| "decimal", |
| "hundredth", |
| "tenth", |
| "customary system of measurement", |
| "customary unit", |
| "gallon", |
| "metric", |
| "metric unit", |
| "ounce", |
| "pint", |
| "quart", |
| "convert", |
| "distance", |
| "millimeter", |
| "thousandth", |
| "hundredths", |
| "conversion factor", |
| "decimal fraction", |
| "multiplier", |
| "equivalence", |
| "multiple", |
| "product", |
| "benchmark fraction", |
| "cup", |
| "pound", |
| "yard", |
| "whole unit", |
| "decimal divisor", |
| "factors", |
| "bisect", |
| "cubic units", |
| "hierarchy", |
| "unit cube", |
| "attribute", |
| "kite", |
| "bisector", |
| "solid figure", |
| "square units", |
| "dimension", |
| "axis", |
| "ordered pair", |
| "angle measure", |
| "horizontal", |
| "vertical", |
| "categorical data", |
| "lcm", |
| "measure of center", |
| "meters per second", |
| "numerical", |
| "solution", |
| "unit price", |
| "unit rate", |
| "variability", |
| "variable", |
| ] |
|
|
| def get_num_words(text): |
| if not isinstance(text, str): |
| print("%s is not a string" % text) |
| text = replace.sub(' ', text) |
| text = re.sub(r'\s+', ' ', text) |
| text = text.strip() |
| text = re.sub(r'\[.+\]', " ", text) |
| return len(text.split()) |
|
|
| def number_to_words(num): |
| try: |
| return num2words(re.sub(",", "", num)) |
| except: |
| return num |
|
|
|
|
| clean_str = lambda s: clean(s, |
| fix_unicode=True, |
| to_ascii=True, |
| lower=True, |
| no_line_breaks=True, |
| no_urls=True, |
| no_emails=True, |
| no_phone_numbers=True, |
| no_numbers=True, |
| no_digits=False, |
| no_currency_symbols=False, |
| no_punct=False, |
| replace_with_url="<URL>", |
| replace_with_email="<EMAIL>", |
| replace_with_phone_number="<PHONE>", |
| replace_with_number=lambda m: number_to_words(m.group()), |
| replace_with_digit="0", |
| replace_with_currency_symbol="<CUR>", |
| lang="en" |
| ) |
|
|
| clean_str_nopunct = lambda s: clean(s, |
| fix_unicode=True, |
| to_ascii=True, |
| lower=True, |
| no_line_breaks=True, |
| no_urls=True, |
| no_emails=True, |
| no_phone_numbers=True, |
| no_numbers=True, |
| no_digits=False, |
| no_currency_symbols=False, |
| no_punct=True, |
| replace_with_url="<URL>", |
| replace_with_email="<EMAIL>", |
| replace_with_phone_number="<PHONE>", |
| replace_with_number=lambda m: number_to_words(m.group()), |
| replace_with_digit="0", |
| replace_with_currency_symbol="<CUR>", |
| lang="en" |
| ) |
|
|
|
|
|
|
| class MultiHeadModel(BertPreTrainedModel): |
| """Pre-trained BERT model that uses our loss functions""" |
|
|
| def __init__(self, config, head2size): |
| super(MultiHeadModel, self).__init__(config, head2size) |
| config.num_labels = 1 |
| self.bert = BertModel(config) |
| self.dropout = nn.Dropout(config.hidden_dropout_prob) |
| module_dict = {} |
| for head_name, num_labels in head2size.items(): |
| module_dict[head_name] = nn.Linear(config.hidden_size, num_labels) |
| self.heads = nn.ModuleDict(module_dict) |
|
|
| self.init_weights() |
|
|
| def forward(self, input_ids, token_type_ids=None, attention_mask=None, |
| head2labels=None, return_pooler_output=False, head2mask=None, |
| nsp_loss_weights=None): |
|
|
| device = "cuda" if torch.cuda.is_available() else "cpu" |
|
|
| |
| output = self.bert( |
| input_ids, token_type_ids=token_type_ids, attention_mask=attention_mask, |
| output_attentions=False, output_hidden_states=False, return_dict=True) |
| pooled_output = self.dropout(output["pooler_output"]).to(device) |
|
|
| head2logits = {} |
| return_dict = {} |
| for head_name, head in self.heads.items(): |
| head2logits[head_name] = self.heads[head_name](pooled_output) |
| head2logits[head_name] = head2logits[head_name].float() |
| return_dict[head_name + "_logits"] = head2logits[head_name] |
|
|
|
|
| if head2labels is not None: |
| for head_name, labels in head2labels.items(): |
| num_classes = head2logits[head_name].shape[1] |
|
|
| |
| if num_classes == 1: |
|
|
| |
| if head2mask is not None and head_name in head2mask: |
| num_positives = head2labels[head2mask[head_name]].sum() |
| if num_positives == 0: |
| return_dict[head_name + "_loss"] = torch.tensor([0]).to(device) |
| else: |
| loss_fct = MSELoss(reduction='none') |
| loss = loss_fct(head2logits[head_name].view(-1), labels.float().view(-1)) |
| return_dict[head_name + "_loss"] = loss.dot(head2labels[head2mask[head_name]].float().view(-1)) / num_positives |
| else: |
| loss_fct = MSELoss() |
| return_dict[head_name + "_loss"] = loss_fct(head2logits[head_name].view(-1), labels.float().view(-1)) |
| else: |
| loss_fct = CrossEntropyLoss(weight=nsp_loss_weights.float()) |
| return_dict[head_name + "_loss"] = loss_fct(head2logits[head_name], labels.view(-1)) |
|
|
|
|
| if return_pooler_output: |
| return_dict["pooler_output"] = output["pooler_output"] |
|
|
| return return_dict |
|
|
| class InputBuilder(object): |
| """Base class for building inputs from segments.""" |
|
|
| def __init__(self, tokenizer): |
| self.tokenizer = tokenizer |
| self.mask = [tokenizer.mask_token_id] |
|
|
| def build_inputs(self, history, reply, max_length): |
| raise NotImplementedError |
|
|
| def mask_seq(self, sequence, seq_id): |
| sequence[seq_id] = self.mask |
| return sequence |
|
|
| @classmethod |
| def _combine_sequence(self, history, reply, max_length, flipped=False): |
| |
| history = [s[:max_length] for s in history] |
| reply = reply[:max_length] |
| if flipped: |
| return [reply] + history |
| return history + [reply] |
|
|
|
|
| class BertInputBuilder(InputBuilder): |
| """Processor for BERT inputs""" |
|
|
| def __init__(self, tokenizer): |
| InputBuilder.__init__(self, tokenizer) |
| self.cls = [tokenizer.cls_token_id] |
| self.sep = [tokenizer.sep_token_id] |
| self.model_inputs = ["input_ids", "token_type_ids", "attention_mask"] |
| self.padded_inputs = ["input_ids", "token_type_ids"] |
| self.flipped = False |
|
|
|
|
| def build_inputs(self, history, reply, max_length, input_str=True): |
| """See base class.""" |
| if input_str: |
| history = [self.tokenizer.convert_tokens_to_ids(self.tokenizer.tokenize(t)) for t in history] |
| reply = self.tokenizer.convert_tokens_to_ids(self.tokenizer.tokenize(reply)) |
| sequence = self._combine_sequence(history, reply, max_length, self.flipped) |
| sequence = [s + self.sep for s in sequence] |
| sequence[0] = self.cls + sequence[0] |
|
|
| instance = {} |
| instance["input_ids"] = list(chain(*sequence)) |
| last_speaker = 0 |
| other_speaker = 1 |
| seq_length = len(sequence) |
| instance["token_type_ids"] = [last_speaker if ((seq_length - i) % 2 == 1) else other_speaker |
| for i, s in enumerate(sequence) for _ in s] |
| return instance |