Logistic Regressionによるニューラルネットを実装したのですが,その正解率が低すぎるので,直したいです.
入力xはshape(1,64)でyはラベルでshape(1,6)の配列です.バッチサイズやニューロンの数を変えたりと,ハイパラメータを変えてみたのですが,正答率が上がりませんでした.どなたか,正答率を上げるために,どのような方法がいいでしょうか,ご教示の程,よろしくお願い致します.
import torch
import torch.nn as nn
import numpy as np
from bindsnet.network import Network
from bindsnet.network.nodes import Input, LIFNodes
from bindsnet.network.topology import Connection
from bindsnet.network.monitors import Monitor
from sklearn.model_selection import train_test_split
from bindsnet.encoding import poisson_loader
import matplotlib.pyplot as plt
# モデルの定義
class LogisticRegression(nn.Module):
def __init__(self, input_size, num_classes):
super(LogisticRegression, self).__init__()
self.linear = nn.Linear(input_size, num_classes)
self.dropout = nn.Dropout(0.5)
def forward(self, x):
x = x.view(-1, 64)
return self.linear(x)
network = Network(dt=1.0)
input_size = 64
num_classes = 6
time = 64
network = Network(dt=1.0)
_BATCH_SIZE = 300
num_epochs = 6
inpt = Input(64, shape=(1,64))
middle = LIFNodes(900, thresh=-52 + torch.randn(900))
center = LIFNodes(900, thresh=-52 + torch.randn(900))
final = LIFNodes(900, thresh=-52 + torch.randn(900))
output = LIFNodes(6, thresh=-52 + torch.randn(6))
network.add_layer(inpt, name='A')
network.add_layer(middle, name='B')
network.add_layer(center, name='C')
network.add_layer(final, name='D')
network.add_layer(output, name='E')
network.add_connection(Connection(inpt, middle, w=torch.randn(inpt.n, middle.n)), 'A', 'B')
network.add_connection(Connection(middle, center, w=torch.randn(middle.n, center.n)), 'B', 'C')
network.add_connection(Connection(center, final, w=torch.randn(center.n, final.n)), 'C', 'D')
network.add_connection(Connection(final, output, w=torch.randn(final.n, output.n)), 'D', 'E')
network.add_connection(Connection(output, output, w=torch.randn(output.n, output.n)), 'E', 'E')
# 入力と出力層だけMonitorを作成(電圧とスパイクを記録)
inpt_monitor = Monitor(obj=inpt, state_vars=("s", "v"), time=500,)
middle_monitor = Monitor(obj=inpt, state_vars=("s", "v"), time=500,)
center_monitor = Monitor(obj=inpt, state_vars=("s", "v"), time=500,)
final_monitor = Monitor(obj=inpt, state_vars=("s", "v"), time=500,)
out_monitor = Monitor(obj=inpt, state_vars=("s", "v"), time=500,)
# Monitorをネットワークに接続
network.add_monitor(monitor=inpt_monitor, name="A")
network.add_monitor(monitor=middle_monitor, name="B")
network.add_monitor(monitor=center_monitor, name="C")
network.add_monitor(monitor=final_monitor, name="D")
network.add_monitor(monitor=out_monitor, name="E")
for l in network.layers:
m = Monitor(network.layers[l], state_vars=['s'], time=time)
network.add_monitor(m, name=l)
npzfile = np.load("C:/Users/name/Desktop/myo-python-1.0.4/myo-armband-nn-master/data/train_set.npz")
x = npzfile['x']
y = npzfile['y']
x_train, x_test = train_test_split(x, test_size=0.3)
y_train, y_test = train_test_split(y,test_size=0.3)
# tensor型に変換
x_train = torch.from_numpy(x_train).float()
y_train = torch.from_numpy(y_train).float()
x_train = torch.clamp(x_train,min=0,max=100)
loader = zip(poisson_loader(x_train * 0.64, time=64), iter(y_train))
training_pairs = []
for i, (datum, y_train) in enumerate(loader):
inputs = {'A': datum.repeat(time, 1), 'E_b': torch.ones(time, 1)}
network.run(inputs=inputs, time=time)
training_pairs.append([network.monitors['E'].get('s').sum(-1), y_train])
network.reset_state_variables()
if (i + 1) % 30 == 0: print('Train progress: (%d / 900)' % (i + 1))
if (i + 1) == 900: print(); break
model = LogisticRegression(input_size, num_classes)
criterion = nn.CrossEntropyLoss() # m2に相当
optimizer = torch.optim.SGD(model.parameters(), lr=0.1)
# スパイクとラベルのトレーニング
for epoch in range(num_epochs):
for i, (s, y_train) in enumerate(training_pairs):
optimizer.zero_grad()
output = model(s.float().softmax(0))
y = torch.reshape(y_train, (-1,))
y_train = y_train.view(-1, 6)
y_train = torch.argmax(y_train, dim=-1)
loss = criterion(output, y_train.long())
loss.backward()
optimizer.step()
x_test = torch.from_numpy(x_test).float()
y_test = torch.from_numpy(y_test).long()
x_test = torch.clamp(x_test, min=0, max=100)
loader = zip(poisson_loader(x_test * 0.64, time=64), iter(y_test))
test_pairs = []
for i, (datum, y_test) in enumerate(loader):
inputs = {'A': datum.repeat(time, 1), 'E_b': torch.ones(time, 1)}
network.run(inputs=inputs, time=time)
test_pairs.append([network.monitors['E'].get('s').sum(-1), y_test])
network.reset_state_variables()
if (i + 1) % 30 == 0: print('Test progress: (%d / 300)' % (i + 1))
if (i + 1) == 300: print(); break
correct, total = 0, 0
for s, y_test in test_pairs:
output = model(s.float().softmax(0)); _, predicted = torch.max(output.data, 1)
total += 1
y_test = torch.argmax(y_test, dim=-1)
correct += int(predicted == y_test.long())
accuracy = 100 * correct / total
print('Accuracy of logistic regression on test examples: %2f %%\n ' % (100 * correct / total))
トレーニングのaccuracy
Accuracy of logistic regression on train examples: 23.740000 %
Accuracy of logistic regression on train examples: 23.860000 %
Accuracy of logistic regression on train examples: 23.940000 %
Accuracy of logistic regression on train examples: 23.980000 %
Accuracy of logistic regression on train examples: 24.008000 %
Accuracy of logistic regression on train examples: 24.030000 %
Accuracy of logistic regression on train examples: 24.045714 %
Accuracy of logistic regression on train examples: 24.057500 %
Accuracy of logistic regression on train examples: 24.064444 %
Accuracy of logistic regression on train examples: 24.070000 %
Accuracy of logistic regression on train examples: 24.074545 %
Accuracy of logistic regression on train examples: 24.078333 %
Accuracy of logistic regression on train examples: 24.081538 %
Accuracy of logistic regression on train examples: 24.084286 %
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Accuracy of logistic regression on train examples: 24.080540 %