mirror of
https://github.com/hexastack/hexabot
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222 lines
7.8 KiB
Python
222 lines
7.8 KiB
Python
import json
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import math
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from typing import Tuple, Dict, List
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from numpy import ndarray
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import tensorflow as tf
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from transformers import TFBertModel, AutoTokenizer, BatchEncoding
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from keras.layers import Dropout, Dense
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from sys import platform
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if platform == "darwin":
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from keras.optimizers.legacy import Adam
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else:
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from keras.optimizers import Adam
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from keras.metrics import SparseCategoricalAccuracy
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from focal_loss import SparseCategoricalFocalLoss
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import numpy as np
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from data_loaders.jisfdl import JISFDL
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import boilerplate as tfbp
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##
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# Intent Classification with BERT
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# This code is based on the paper BERT for Joint Intent Classification and Slot Filling by Chen et al. (2019),
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# https://arxiv.org/abs/1902.10909 but on a different dataset made for a class project.
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#
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# Ideas were also taken from https://github.com/monologg/JointBERT, which is a PyTorch implementation of
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# the paper with the original dataset.
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##
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BERT_MODEL_BY_LANGUAGE = {
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'en': "bert-base-cased",
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'fr': "dbmdz/bert-base-french-europeana-cased",
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}
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@tfbp.default_export
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class IntentClassifier(tfbp.Model):
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default_hparams = {
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"language": "",
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"num_epochs": 2,
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"dropout_prob": 0.1,
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"intent_num_labels": 7,
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"gamma": 2,
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"k": 3
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}
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data_loader: JISFDL
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def __init__(self, *args, **kwargs):
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super().__init__(*args, **kwargs)
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# Init data loader
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self.data_loader = JISFDL(**kwargs)
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# Load Tokenizer from transformers
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# We will use a pretrained bert model bert-base-cased for both Tokenizer and our classifier.
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bert_model_name = BERT_MODEL_BY_LANGUAGE[self.hparams.language or "en"]
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self.tokenizer = AutoTokenizer.from_pretrained(
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bert_model_name, use_fast=False)
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self.bert = TFBertModel.from_pretrained(bert_model_name)
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self.dropout = Dropout(self.hparams.dropout_prob)
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self.intent_classifier = Dense(self.hparams.intent_num_labels,
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name="intent_classifier", activation="softmax")
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def call(self, inputs, **kwargs):
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trained_bert = self.bert(inputs, **kwargs)
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pooled_output = trained_bert.pooler_output
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# pooled_output for intent classification
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pooled_output = self.dropout(pooled_output,
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training=kwargs.get("training", False))
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intent_probas = self.intent_classifier(pooled_output)
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return intent_probas
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def load_data(self, data_loader) -> Tuple[BatchEncoding, tf.Tensor, ndarray, int, int]:
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return data_loader(self.tokenizer)
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def get_metrics_by_intent(self, intent_probas: List[float], encoded_intents: tf.Tensor) -> Dict[str, dict]:
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"""evaluating every intent individually"""
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intent_names = self.extra_params["intent_names"] # type: ignore
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count = {}
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scores = {}
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data_size = len(intent_probas)
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# The confidence gets computed as the average probability predicted in each intent
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for probas, actual_intent in zip(intent_probas, encoded_intents):
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intent_name = intent_names[actual_intent]
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# We sum and then divide by the number of texts in the intent.
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count[intent_name] = count.get(intent_name, 0)+1
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scores[intent_name] = scores.get(intent_name, {})
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scores[intent_name]["intent_confidence"] = scores[intent_name].get("intent_confidence", 0)\
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+ probas[actual_intent]
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scores[intent_name]["loss"] = scores[intent_name].get("loss", 0)\
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- math.log2(probas[actual_intent])
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for intent_name in count.keys():
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scores[intent_name]["frequency"] = count[intent_name]/data_size
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scores[intent_name]["intent_confidence"] /= count[intent_name]
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scores[intent_name]["loss"] /= count[intent_name]
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return scores
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def aggregate_metric(self, scores, key):
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"""Group the intent metrics into a global evaluation"""
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return np.sum([(scores[intent]["frequency"] * scores[intent][key]) for intent in scores.keys()])
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def format_scores(self, scores: Dict[str, dict]):
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for intent in scores.keys():
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for metric, score in scores[intent].items():
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# we will only take 4 decimals.
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scores[intent][metric] = "{:.4f}".format(score)
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return scores
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@tfbp.runnable
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def fit(self):
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"""Training"""
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encoded_texts, encoded_intents, encoded_slots, intent_names, slot_names = self.data_loader(
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self.tokenizer)
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if self.hparams.intent_num_labels != len(intent_names):
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raise ValueError(
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f"Hyperparam intent_num_labels mismatch, should be : {len(intent_names)}"
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)
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# Hyperparams, Optimizer and Loss function
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opt = Adam(learning_rate=3e-5, epsilon=1e-08)
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losses = SparseCategoricalFocalLoss(gamma=self.hparams.gamma)
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metrics = [SparseCategoricalAccuracy("accuracy")]
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# Compile model
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self.compile(optimizer=opt, loss=losses, metrics=metrics)
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x = {"input_ids": encoded_texts["input_ids"], "token_type_ids": encoded_texts["token_type_ids"],
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"attention_mask": encoded_texts["attention_mask"]}
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super().fit(
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x, encoded_intents, epochs=self.hparams.num_epochs, batch_size=32, shuffle=True)
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# Persist the model
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self.extra_params["intent_names"] = intent_names
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self.save()
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@tfbp.runnable
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def evaluate(self):
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encoded_texts, encoded_intents, _, _, _ = self.data_loader(
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self.tokenizer, self.extra_params)
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metrics = [SparseCategoricalAccuracy("accuracy")]
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self.compile(metrics=metrics)
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intent_probas = self(encoded_texts) # type: ignore
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scores = self.get_metrics_by_intent(intent_probas, encoded_intents)
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overall_score = {}
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overall_score["intent_confidence"] = self.aggregate_metric(
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scores, "intent_confidence")
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overall_score["loss"] = self.aggregate_metric(scores, "loss")
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scores["Overall Scores"] = overall_score
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scores = self.format_scores(scores)
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print("\nScores per intent:")
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for intent, score in scores.items():
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print("{}: {}".format(intent, score))
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return scores
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def get_prediction(self, text: str):
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inputs = self.data_loader.encode_text(text, self.tokenizer)
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intent_probas = self(inputs) # type: ignore
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intent_probas_np = intent_probas.numpy()
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# Get the indices of the maximum values
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intent_id = intent_probas_np.argmax(axis=-1)[0]
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# get the confidences for each intent
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intent_confidences = intent_probas_np[0]
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margin = self.compute_normalized_confidence_margin(intent_probas_np)
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output = {
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"text": text,
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"intent": {"name": self.extra_params["intent_names"][intent_id],
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"confidence": float(intent_confidences[intent_id])},
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"margin": margin,
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}
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return output
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def compute_top_k_confidence(self, probs, k=3):
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sorted_probas = np.sort(probs[0])[::-1] # Sort in descending order
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top_k_sum = np.sum(sorted_probas[:k])
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return top_k_sum
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def compute_normalized_confidence_margin(self, probs):
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highest_proba = np.max(probs[0])
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sum_of_probas = self.compute_top_k_confidence(probs, self.hparams.k)
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# Normalized margin
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normalized_margin = highest_proba / sum_of_probas
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return normalized_margin
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@tfbp.runnable
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def predict(self):
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while True:
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text = input("Provide text: ")
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output = self.get_prediction(text)
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print(output)
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# Optionally, provide a way to exit the loop
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if input("Try again? (y/n): ").lower() != 'y':
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break
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