from typing import Any import numpy as np import pandas as pd from tensorflow.keras.layers import Embedding, Bidirectional, LSTM, Dense from tensorflow.keras.models import Sequential from tensorflow.keras.preprocessing.sequence import pad_sequences from tensorflow.keras.preprocessing.text import Tokenizer from research.neural_network_model import NeuralNetworkModel class LSTMModel(NeuralNetworkModel): """LSTM model for sequence learning""" def build_model_with_vocab(self, vocab_size: int, max_len: int = 6, **kwargs) -> Any: params = kwargs model = Sequential( [ Embedding(input_dim=vocab_size, output_dim=params.get("embedding_dim", 64)), Bidirectional(LSTM(params.get("lstm_units", 32), return_sequences=True)), Bidirectional(LSTM(params.get("lstm_units", 32))), Dense(64, activation="relu"), Dense(2, activation="softmax"), ] ) model.compile( loss="sparse_categorical_crossentropy", optimizer="adam", metrics=["accuracy"] ) return model def prepare_features(self, X: pd.DataFrame) -> np.ndarray: text_data = [] for feature_type in self.config.features: if feature_type.value in X.columns: text_data.extend(X[feature_type.value].astype(str).tolist()) if not text_data: raise ValueError("No text data found in the provided DataFrame.") # Initialize tokenizer if needed if self.tokenizer is None: self.tokenizer = Tokenizer(char_level=False, lower=True, oov_token="") self.tokenizer.fit_on_texts(text_data) # Convert to sequences sequences = self.tokenizer.texts_to_sequences(text_data[: len(X)]) max_len = self.config.model_params.get("max_len", 6) return pad_sequences(sequences, maxlen=max_len, padding="post")