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))
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?
As suggested by Michael Hodel I have applied the
OneHotEncoder instead of using
It is giving me error
sparse matrix length is ambiguous; use getnnz() or shape
pd.get_dummies() instead of 'OneHotEncoder`