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I am attempting to use machine learning/neural network for studying stocks. Code of my 'regressionModel' file is as follows:

import numpy as np
import matplotlib.pyplot as plt
import pandas as pd
from sklearn.model_selection import train_test_split
from sklearn.model_selection import cross_val_score
from sklearn.preprocessing import MinMaxScaler
from sklearn import datasets
from sklearn.neural_network import MLPClassifier

digits = datasets.load_digits()
numhrs = 12

def init(data) :
    inx, iny = [data['EMAs'][0], data['SMAs'][0]], data['endPeriodPrices']
    #X, Y = data['EMAs'][0], data['endPeriodPrices']
    del iny[0:numhrs]
    while len(inx) > len(iny) : inx.pop()
    while len(inx[0]) > len(iny) : inx[0].pop()
    while len(inx[1]) > len(iny) : inx[1].pop()
    newX = []
    for item in range(len(inx[0])) :
        newX.append([inx[0][item], inx[1][item]])
    X_tr, X_t, Y_tr, Y_t = train_test_split(newX, iny, test_size=0.3, random_state=0)
    X_tr.astype(int)
    scaling = MinMaxScaler(feature_range=(-1,1)).fit(X_tr)
    X_tr = scaling.transform(X_tr)
    X_t = scaling.transform(X_t)
    nn = MLPClassifier(hidden_layer_sizes=(512, ), activation = 'relu', solver = 'adam', shuffle = True, tol=1e-4, random_state=1)
    cv = cross_val_score(nn, X_tr, Y_tr, cv=10)
    test_score = nn.fit(X_tr, Y_tr).score(X_t, Y_t)
    print('CV accuracy score: %0.3f' % np.mean(cv))
    print('Test accuracy score: %0.3f' % (test_score))

The error that I am getting is as follows:

warnings.warn("Estimator fit failed. The score on this train-test"
Traceback (most recent call last):
  File "mainprogram.py", line 41, in <module>
    regressionModel.init(cryptoChoices[desiredCoin])
  File "C:\Users\Julian\Documents\CryptoTradeTool\regressionModel.py", line 33, in init
    test_score = nn.fit(X_tr, Y_tr).score(X_t, Y_t)
  File "C:\Users\Julian\Documents\CryptoTradeTool\.venv\lib\site-packages\sklearn\neural_network\_multilayer_perceptron.py", line 1027, in fit
    return self._fit(X, y, incremental=(self.warm_start and
  File "C:\Users\Julian\Documents\CryptoTradeTool\.venv\lib\site-packages\sklearn\neural_network\_multilayer_perceptron.py", line 326, in _fit
    X, y = self._validate_input(X, y, incremental)
  File "C:\Users\Julian\Documents\CryptoTradeTool\.venv\lib\site-packages\sklearn\neural_network\_multilayer_perceptron.py", line 971, in _validate_input
    self._label_binarizer.fit(y)
  File "C:\Users\Julian\Documents\CryptoTradeTool\.venv\lib\site-packages\sklearn\preprocessing\_label.py", line 437, in fit
    self.classes_ = unique_labels(y)
  File "C:\Users\Julian\Documents\CryptoTradeTool\.venv\lib\site-packages\sklearn\utils\multiclass.py", line 97, in unique_labels
    raise ValueError("Unknown label type: %s" % repr(ys))
ValueError: Unknown label type: (array([9882.37166161, 9233.91408649, 9155.17422894, ..., 9775.32490259,
       9437.21027712, 9108.97314461]),)

Not sure what I am doing wrong here. The X value arrays are lists of float variables, same with the Y value array.

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    MLPClassifier can only process categorial labels (like 0, 1, 2, 3...). But your labels (i.e. Y) are real numbers, so there are illegal. I notice that your task is regression rather than classification. sklearn.neural_network.MLPRegressor may be more suitable, I guess. – Lizhi Liu Aug 7 '20 at 6:42
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"MLPClassifier can only process categorial labels (like 0, 1, 2, 3...). But your labels (i.e. Y) are real numbers, so there are illegal. I notice that your task is regression rather than classification. sklearn.neural_network.MLPRegressor may be more suitable, I guess. – Lizhi Liu yesterday"

Thanks for the advice, this took care of the issue. I had to adjust the code a bit more, but it is all squared away.

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