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""" |
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Summary: |
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This module provides the main functionality of mcfly: searching for an |
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optimal model architecture. The work flow is as follows: |
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Function generate_models from modelgen.py generates and compiles models. |
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Function train_models_on_samples trains those models. |
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Function plotTrainingProcess plots the training process. |
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Function find_best_architecture is wrapper function that combines |
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these steps. |
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Example function calls can be found in the tutorial notebook |
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'EvaluateDifferentModels.ipynb'. |
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""" |
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import numpy as np |
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from . import modelgen |
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from sklearn import neighbors, metrics as sklearnmetrics |
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import warnings |
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import json |
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import os |
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from keras.callbacks import EarlyStopping |
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from keras import metrics |
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def train_models_on_samples(X_train, y_train, X_val, y_val, models, |
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nr_epochs=5, subset_size=100, verbose=True, outputfile=None, |
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model_path=None, early_stopping=False, |
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batch_size=20, metric='accuracy'): |
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""" |
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Given a list of compiled models, this function trains |
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them all on a subset of the train data. If the given size of the subset is |
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smaller then the size of the data, the complete data set is used. |
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Parameters |
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---------- |
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X_train : numpy array of shape (num_samples, num_timesteps, num_channels) |
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The input dataset for training |
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y_train : numpy array of shape (num_samples, num_classes) |
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The output classes for the train data, in binary format |
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X_val : numpy array of shape (num_samples_val, num_timesteps, num_channels) |
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The input dataset for validation |
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y_val : numpy array of shape (num_samples_val, num_classes) |
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The output classes for the validation data, in binary format |
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models : list of model, params, modeltypes |
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List of keras models to train |
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nr_epochs : int, optional |
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nr of epochs to use for training one model |
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subset_size : |
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The number of samples used from the complete train set |
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verbose : bool, optional |
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flag for displaying verbose output |
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outputfile: str, optional |
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Filename to store the model training results |
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model_path : str, optional |
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Directory to store the models as HDF5 files |
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early_stopping: bool |
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Stop when validation loss does not decrease |
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batch_size : int |
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nr of samples per batch |
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metric : str |
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metric to store in the history object |
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Returns |
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---------- |
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histories : list of Keras History objects |
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train histories for all models |
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val_metrics : list of floats |
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validation accuraracies of the models |
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val_losses : list of floats |
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validation losses of the models |
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""" |
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# if subset_size is smaller then X_train, this will work fine |
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X_train_sub = X_train[:subset_size, :, :] |
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y_train_sub = y_train[:subset_size, :] |
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metric_name = get_metric_name(metric) |
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histories = [] |
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val_metrics = [] |
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val_losses = [] |
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for i, (model, params, model_types) in enumerate(models): |
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if verbose: |
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print('Training model %d' % i, model_types) |
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model_metrics = [get_metric_name(name) for name in model.metrics] |
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if metric_name not in model_metrics: |
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raise ValueError( |
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'Invalid metric. The model was not compiled with {} as metric'.format(metric_name)) |
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if early_stopping: |
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callbacks = [ |
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EarlyStopping(monitor='val_loss', patience=0, verbose=verbose, mode='auto')] |
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else: |
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callbacks = [] |
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history = model.fit(X_train_sub, y_train_sub, |
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epochs=nr_epochs, batch_size=batch_size, |
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# see comment on subsize_set |
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validation_data=(X_val, y_val), |
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verbose=verbose, |
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callbacks=callbacks) |
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histories.append(history) |
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val_metrics.append(history.history['val_' + metric_name][-1]) |
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val_losses.append(history.history['val_loss'][-1]) |
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if outputfile is not None: |
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store_train_hist_as_json(params, model_types, |
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history.history, outputfile) |
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if model_path is not None: |
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model.save(os.path.join(model_path, 'model_{}.h5'.format(i))) |
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return histories, val_metrics, val_losses |
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def store_train_hist_as_json(params, model_type, history, outputfile, metric_name='acc'): |
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""" |
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This function stores the model parameters, the loss and accuracy history |
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of one model in a JSON file. It appends the model information to the |
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existing models in the file. |
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Parameters |
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---------- |
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params : dict |
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parameters for one model |
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model_type : Keras model object |
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Keras model object for one model |
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history : dict |
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training history from one model |
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outputfile : str |
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path where the json file needs to be stored |
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metric_name : str, optional |
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name of metric from history to store |
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""" |
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jsondata = params.copy() |
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for k in jsondata.keys(): |
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if isinstance(jsondata[k], np.ndarray): |
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jsondata[k] = jsondata[k].tolist() |
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jsondata['train_metric'] = history[metric_name] |
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jsondata['train_loss'] = history['loss'] |
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jsondata['val_metric'] = history['val_' + metric_name] |
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jsondata['val_loss'] = history['val_loss'] |
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jsondata['modeltype'] = model_type |
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jsondata['metric'] = metric_name |
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if os.path.isfile(outputfile): |
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with open(outputfile, 'r') as outfile: |
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previousdata = json.load(outfile) |
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else: |
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previousdata = [] |
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previousdata.append(jsondata) |
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with open(outputfile, 'w') as outfile: |
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json.dump(previousdata, outfile, sort_keys=True, |
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indent=4, ensure_ascii=False) |
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def find_best_architecture(X_train, y_train, X_val, y_val, verbose=True, |
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number_of_models=5, nr_epochs=5, subset_size=100, |
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outputpath=None, model_path=None, metric='accuracy', |
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**kwargs): |
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""" |
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Tries out a number of models on a subsample of the data, |
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and outputs the best found architecture and hyperparameters. |
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Parameters |
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---------- |
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X_train : numpy array |
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The input dataset for training of shape |
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(num_samples, num_timesteps, num_channels) |
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y_train : numpy array |
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The output classes for the train data, in binary format of shape |
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(num_samples, num_classes) |
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X_val : numpy array |
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The input dataset for validation of shape |
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(num_samples_val, num_timesteps, num_channels) |
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y_val : numpy array |
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The output classes for the validation data, in binary format of shape |
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(num_samples_val, num_classes) |
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verbose : bool, optional |
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flag for displaying verbose output |
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number_of_models : int, optiona |
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The number of models to generate and test |
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nr_epochs : int, optional |
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The number of epochs that each model is trained |
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subset_size : int, optional |
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The size of the subset of the data that is used for finding |
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the optimal architecture |
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outputpath : str, optional |
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File location to store the model results |
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model_path: str, optional |
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Directory to save the models as HDF5 files |
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metric: str, optional |
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metric that is used to evaluate the model on the validation set. |
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See https://keras.io/metrics/ for possible metrics |
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**kwargs: key-value parameters |
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parameters for generating the models |
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(see docstring for modelgen.generate_models) |
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Returns |
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---------- |
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best_model : Keras model |
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Best performing model, already trained on a small sample data set. |
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best_params : dict |
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Dictionary containing the hyperparameters for the best model |
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best_model_type : str |
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Type of the best model |
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knn_acc : float |
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accuaracy for kNN prediction on validation set |
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""" |
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models = modelgen.generate_models(X_train.shape, y_train.shape[1], |
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number_of_models=number_of_models, |
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metrics=[metric], |
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**kwargs) |
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histories, val_accuracies, val_losses = train_models_on_samples(X_train, |
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y_train, |
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X_val, |
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y_val, |
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models, |
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nr_epochs, |
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subset_size=subset_size, |
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verbose=verbose, |
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outputfile=outputpath, |
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model_path=model_path, |
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metric=metric) |
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best_model_index = np.argmax(val_accuracies) |
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best_model, best_params, best_model_type = models[best_model_index] |
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knn_acc = kNN_accuracy( |
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X_train[:subset_size, :, :], y_train[:subset_size, :], X_val, y_val) |
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if verbose: |
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print('Best model: model ', best_model_index) |
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print('Model type: ', best_model_type) |
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print('Hyperparameters: ', best_params) |
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print(str(metric) + ' on validation set: ', |
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val_accuracies[best_model_index]) |
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print('Accuracy of kNN on validation set', knn_acc) |
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if val_accuracies[best_model_index] < knn_acc: |
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warnings.warn('Best model not better than kNN: ' + |
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str(val_accuracies[best_model_index]) + ' vs ' + |
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str(knn_acc) |
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) |
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return best_model, best_params, best_model_type, knn_acc |
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def get_metric_name(name): |
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""" |
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Gives the keras name for a metric |
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242
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Parameters |
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---------- |
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name : str |
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245
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original name of the metric |
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246
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Returns |
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247
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------- |
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248
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249
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""" |
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250
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1 |
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if name == 'acc' or name == 'accuracy': |
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1 |
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return 'acc' |
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1 |
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try: |
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1 |
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metric_fn = metrics.get(name) |
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1 |
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return metric_fn.__name__ |
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except: |
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pass |
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return name |
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258
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259
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260
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1 |
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def kNN_accuracy(X_train, y_train, X_val, y_val, k=1): |
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261
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""" |
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262
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Performs k-Neigherst Neighbors and returns the accuracy score. |
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263
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264
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Parameters |
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265
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---------- |
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266
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X_train : numpy array |
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267
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Train set of shape (num_samples, num_timesteps, num_channels) |
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268
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y_train : numpy array |
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269
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Class labels for train set |
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X_val : numpy array |
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271
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Validation set of shape (num_samples, num_timesteps, num_channels) |
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y_val : numpy array |
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273
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Class labels for validation set |
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274
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k : int |
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275
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number of neighbors to use for classifying |
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276
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277
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Returns |
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278
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------- |
|
279
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|
accuracy: float |
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280
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accuracy score on the validation set |
|
281
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|
""" |
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282
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1 |
|
num_samples, num_timesteps, num_channels = X_train.shape |
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1 |
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clf = neighbors.KNeighborsClassifier(k) |
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1 |
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clf.fit( |
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285
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X_train.reshape( |
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286
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num_samples, |
|
287
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num_timesteps * |
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288
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num_channels), |
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y_train) |
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1 |
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num_samples, num_timesteps, num_channels = X_val.shape |
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291
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1 |
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val_predict = clf.predict( |
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292
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X_val.reshape(num_samples, |
|
293
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num_timesteps * num_channels)) |
|
294
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return sklearnmetrics.accuracy_score(val_predict, y_val) |
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This check looks for lines that are too long. You can specify the maximum line length.