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I am working on a Data Science project which requires implementation of a neural network. The dataset I am providing for training is not sequential and has class labels. But I don't know why it is treating it as sequence of events.

I am using the following code for the model:

model = keras.Sequential([
    layers.Dense(100, activation='relu'),
    layers.Dropout(0.4),
    layers.Dense(100, activation='relu'),
    layers.Dropout(0.4),
    layers.Dense(100, activation='relu'),
    layers.Dropout(0.4),
    layers.Dense(100, activation='relu'),
    layers.Dense(6, activation='softmax')
])
model.compile(
    optimizer="adam",
    loss="sparse_categorical_crossentropy",
    metrics=['accuracy']
)
model.fit(X_train, y_train,epochs=100,batch_size=2100)
y_pred=model.predict(X_test)
print(accuracy_score(y_test,y_pred))

The accuracy_score function is giving this error

Classification metrics can't handle a mix of multiclass and continuous-multioutput targets

This error messages shows when the algorithm is performing the regression. How can I solve this issue?

Edit 1

As suggested by Michael Hodel I have applied the OneHotEncoder instead of using LabelEncoder.

data['label']= ohc.fit_transform(data[['label']])

It is giving me error

sparse matrix length is ambiguous; use getnnz() or shape[0]

Edit 2

I used pd.get_dummies() instead of 'OneHotEncoder`

3
  • I am pretty sure that this error complains about your targets not your predictions. Check what is inside y_test
    – lejlot
    Aug 29, 2022 at 18:36
  • It might be worth double-checking that all your classification labels are integers. Aug 29, 2022 at 18:37
  • Yes I use 'LabelEncoder' for preprocessing and double checked it Aug 29, 2022 at 19:08

1 Answer 1

1

Your y_pred are floats, but accuracy_score expects integers. I'd recommend you one-hot encode your labels and use the categorical_crossentropy loss function. Then y_pred represent the class probabilities which can simply converted to predictions via y_pred.argmax(axis=1). An example with mock data:

from sklearn.metrics import accuracy_score
import tensorflow.keras as keras
import tensorflow.keras.layers as layers
import numpy as np

n_classes = 6
n_variables = 100
n_examples = 1000
X = np.random.normal(0, 1, (n_examples, n_variables))
y_ = np.random.choice(n_classes, size=n_examples)
y = np.eye(n_classes)[y_]

idx = int(n_examples * 0.8)
X_train, y_train = X[:idx], y[:idx]
X_test, y_test = X[idx:], y[idx:]

model = keras.Sequential([
    layers.Dense(100, activation='relu'),
    layers.Dropout(0.4),
    layers.Dense(100, activation='relu'),
    layers.Dropout(0.4),
    layers.Dense(100, activation='relu'),
    layers.Dropout(0.4),
    layers.Dense(100, activation='relu'),
    layers.Dense(6, activation='softmax')
])
model.compile(
    optimizer="adam",
    loss="categorical_crossentropy",
    metrics=['accuracy']
)
model.fit(X_train, y_train,epochs=10,batch_size=100)
y_pred=model.predict(X_test)
print(accuracy_score(y_test.argmax(axis=1), y_pred.argmax(axis=1)))

Here y_ are your classes of shape (n_examples,), and y are the one-hot encoded classes of shape (n_examples, n_classes) and model.predict(X_test) gives predicted probabilities of shape (n_examples, n_classes) and model.predict(X_test).argmax(axis=1) gives prediced classes of shape (n_examples,).

3
  • I have used LabelEncoder and made sure that my y_test are integers 1 to 6 Aug 29, 2022 at 19:16
  • What do your classes represent? If there is no inherent order in them (agreeing with the numbering), then the LabelEncoder is probably not an adequate choice. Aug 29, 2022 at 19:19
  • I have updated the question. There is an error I am getting with OneHotEncoder Aug 30, 2022 at 5:48

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