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У меня проблема. Почему accuracy всегда показывает 100%. это ошибка. Пересмотрел много информации и вроде сделал все по шаблону. но все равно 100%. Взял стандартную нейросеть на Гитхабе для прогноза загрязнения в Пекине.(на ней обычно учатся) Функция потерь работает хорошо. А вот accuracy нет. Как исправить? Вот Код. (На многих сайтах он есть)
from math import sqrt from numpy import concatenate from matplotlib import pyplot from pandas import read_csv from pandas import DataFrame from pandas import concat from sklearn import metrics from sklearn.preprocessing import MinMaxScaler from sklearn.preprocessing import LabelEncoder from sklearn.metrics import mean_squared_error from keras.models import Sequential from keras.layers import Dense from keras.layers import LSTM # convert series to supervised learning def series_to_supervised(data, n_in=1, n_out=1, dropnan=True): n_vars = 1 if type(data) is list else data.shape[1] df = DataFrame(data) cols, names = list(), list() # input sequence (t-n, ... t-1) for i in range(n_in, 0, -1): cols.append(df.shift(i)) names += [('var%d(t-%d)' % (j + 1, i)) for j in range(n_vars)] # forecast sequence (t, t+1, ... t+n) for i in range(0, n_out): cols.append(df.shift(-i)) if i == 0: names += [('var%d(t)' % (j + 1)) for j in range(n_vars)] else: names += [('var%d(t+%d)' % (j + 1, i)) for j in range(n_vars)] # put it all together agg = concat(cols, axis=1) agg.columns = names # drop rows with NaN values if dropnan: agg.dropna(inplace=True) return agg # load dataset dataset = read_csv('pollution.csv', header=0, index_col=0) values = dataset.values # integer encode direction encoder = LabelEncoder() values[:, 4] = encoder.fit_transform(values[:, 4]) # ensure all data is float values = values.astype('float32') # normalize features scaler = MinMaxScaler(feature_range=(0, 1)) scaled = scaler.fit_transform(values) # frame as supervised learning reframed = series_to_supervised(scaled, 1, 1) # drop columns we don't want to predict reframed.drop(reframed.columns[[9, 10, 11, 12, 13, 14, 15]], axis=1, inplace=True) print(reframed.head()) # split into train and test sets values = reframed.values n_train_hours = 365 * 24 train = values[:n_train_hours, :] test = values[n_train_hours:, :] # split into input and outputs train_X, train_y = train[:, :-1], train[:, -1] test_X, test_y = test[:, :-1], test[:, -1] # reshape input to be 3D [samples, timesteps, features] train_X = train_X.reshape((train_X.shape[0], 1, train_X.shape[1])) test_X = test_X.reshape((test_X.shape[0], 1, test_X.shape[1])) print(train_X.shape, train_y.shape, test_X.shape, test_y.shape) # design network model = Sequential() model.add(LSTM(100, input_shape=(train_X.shape[1], train_X.shape[2]))) model.add(Dense(1)) model.compile(loss='mae', optimizer='adam', metrics=['accuracy']) # fit network history = model.fit(train_X, train_y, epochs=5, batch_size=54, validation_data=(test_X, test_y), verbose=2) train_acc = model.evaluate(train_X, train_y, verbose=2) test_acc = model.evaluate(test_X, test_y, verbose=2) # plot history pyplot.subplot(211) pyplot.title('Loss') pyplot.plot(history.history['loss'], label='train') pyplot.plot(history.history['val_loss'], label='test') pyplot.legend() pyplot.subplot(212) pyplot.title('Accuracy') pyplot.plot(history.history['accuracy'], label='train') pyplot.plot(history.history['val_accuracy'], label='test') pyplot.legend() pyplot.show() # make a prediction yhat = model.predict(test_X) test_X = test_X.reshape((test_X.shape[0], test_X.shape[2])) # invert scaling for forecast inv_yhat = concatenate((yhat, test_X[:, 1:]), axis=1) inv_yhat = scaler.inverse_transform(inv_yhat) inv_yhat = inv_yhat[:, 0] # invert scaling for actual test_y = test_y.reshape((len(test_y), 1)) inv_y = concatenate((test_y, test_X[:, 1:]), axis=1) inv_y = scaler.inverse_transform(inv_y) inv_y = inv_y[:, 0] # calculate RMSE rmse = sqrt(mean_squared_error(inv_y, inv_yhat)) print('Test RMSE: %.3f' % rmse)
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