==================================== Dummy Classifier ==================================== Dummy Classifier classical method implementation. This section contains the Dummy Classifier implementation for classification tasks. Dummy Classifier is a classifier that makes predictions using simple rules, useful as a baseline for comparison with more sophisticated classifiers. .. automodule:: TALENT.model.classical_methods.dummy :members: :undoc-members: :show-inheritance: .. class:: DummyMethod :noindex: Dummy Classifier method for classification tasks. **Key Features:** - Uses sklearn's DummyClassifier for classification - Provides baseline predictions for comparison - Supports both binary and multiclass classification - Automatically handles data preprocessing including normalization and encoding - Saves trained model to pickle file for later use - Simple baseline classifier **Algorithm:** Dummy Classifier is a classifier that makes predictions using simple rules. It is useful as a baseline for comparison with more sophisticated classifiers. It can use various strategies like most frequent, stratified, uniform, constant, etc. .. method:: __init__(args, is_regression) :noindex: Initialize the Dummy Classifier method. **Parameters:** * **args** (*object*) -- Configuration arguments containing model settings * **is_regression** (*bool*) -- Whether the task is regression (True) or classification (False) .. method:: construct_model(model_config=None) :noindex: Construct the Dummy Classifier model instance. **Parameters:** * **model_config** (*dict, optional*) -- Model configuration parameters for Dummy Classifier **Model Creation:** - Creates `DummyClassifier` classifier - Configures parameters like strategy, random_state, etc. .. method:: fit(data, info, train=True, config=None) :noindex: Train the Dummy Classifier model on the provided data. **Parameters:** * **data** (*tuple*) -- Tuple containing (N, C, y) where N is numerical features, C is categorical features, y is labels * **info** (*dict*) -- Dataset information * **train** (*bool, default=True*) -- Whether to train the model or just load from checkpoint * **config** (*dict, optional*) -- Additional configuration parameters **Returns:** * **time_cost** (*float*) -- Training time in seconds **Training Process:** 1. **Data Preprocessing:** Handles missing values, categorical encoding, normalization 2. **Model Training:** Fits the Dummy Classifier model 3. **Model Saving:** Saves the trained model to disk for later use .. method:: predict(data, info, model_name) :noindex: Make predictions using the trained Dummy Classifier model. **Parameters:** * **data** (*tuple*) -- Tuple containing (N, C, y) where N is numerical features, C is categorical features, y is labels * **info** (*dict*) -- Dataset information * **model_name** (*str*) -- Name of the model for saving/loading **Returns:** * **test_logit** (*array-like*) -- Test predictions (class labels for classification) **Prediction Process:** 1. **Data Preprocessing:** Applies same preprocessing as training data 2. **Model Loading:** Loads the trained Dummy Classifier model 3. **Prediction:** Generates baseline predictions using simple rules 4. **Output:** Returns predicted class labels **Evaluation Metrics:** - **For classification:** returns Accuracy, Avg_Precision, Avg_Recall, F1 metrics **References:** ``[1] scikit-learn developers. (2023). DummyClassifier. scikit-learn documentation.``