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Petra
DM_course
Commits
b56b74b3
Commit
b56b74b3
authored
Apr 08, 2019
by
Petra
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Delete 9_neural_nets-4-time_series_Metod.py
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from
pandas
import
read_csv
from
matplotlib
import
pyplot
from
sklearn.preprocessing
import
LabelEncoder
from
sklearn.preprocessing
import
MinMaxScaler
from
pandas
import
DataFrame
from
pandas
import
concat
from
keras
import
Sequential
from
keras.layers
import
Dense
from
keras.layers
import
LSTM
from
sklearn.metrics
import
mean_squared_error
from
numpy
import
concatenate
from
math
import
sqrt
#load and plot dataset
#file = r'd:\tmp\technical_analysis_test_eth_usd_bitstamp_900_2018-12-01T00-00-00_2019-02-15T00-00-00_5minfuture.csv'
file
=
r"d:\tmp\technical_tmp.csv "
# load dataset
dataset
=
read_csv
(
file
,
header
=
0
,
index_col
=
0
)
values
=
dataset
.
values
# specify columns to plot
groups
=
range
(
len
(
dataset
.
columns
))
i
=
1
# plot each column
pyplot
.
figure
()
for
group
in
groups
:
pyplot
.
subplot
(
len
(
groups
),
1
,
i
)
pyplot
.
plot
(
values
[:,
group
])
pyplot
.
title
(
dataset
.
columns
[
group
],
y
=
0.5
,
loc
=
'right'
)
i
+=
1
pyplot
.
show
()
#---------------------------------------------------
# convert series to supervised learning
print
(
dataset
.
head
)
# load dataset
#dataset = read_csv('.\Datasets\pollution_clean.csv', header=0, index_col=0)
#values = dataset.values
# ensure all data is float
values
=
values
.
astype
(
'float32'
)
# normalize features
scaler
=
MinMaxScaler
(
feature_range
=
(
0
,
1
))
scaled
=
scaler
.
fit_transform
(
values
)
print
(
"shape "
,
scaled
.
shape
)
# drop columns we don't want to predict
# split into train and test sets
#values = reframed.values
n_train_hours
=
5000
train
=
values
[:
n_train_hours
,
:]
print
(
"tainn "
,
train
.
shape
)
test
=
values
[
n_train_hours
:,
:]
print
(
"test "
,
test
.
shape
)
# 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
(
50
,
input_shape
=
(
train_X
.
shape
[
1
],
train_X
.
shape
[
2
])))
model
.
add
(
Dense
(
1
))
model
.
compile
(
loss
=
'mae'
,
optimizer
=
'adam'
)
# fit network
history
=
model
.
fit
(
train_X
,
train_y
,
epochs
=
50
,
batch_size
=
72
,
validation_data
=
(
test_X
,
test_y
),
verbose
=
2
,
shuffle
=
False
)
# plot history
pyplot
.
plot
(
history
.
history
[
'loss'
],
label
=
'train'
)
pyplot
.
plot
(
history
.
history
[
'val_loss'
],
label
=
'test'
)
pyplot
.
legend
()
pyplot
.
show
()
print
(
"make prediction"
)
# make a prediction
yhat
=
model
.
predict
(
test_X
)
print
(
"yhat"
,
yhat
.
shape
)
test_X
=
test_X
.
reshape
((
test_X
.
shape
[
0
],
test_X
.
shape
[
2
]))
print
(
"test_X"
,
test_X
.
shape
)
# invert scaling for actual
#test_y = test_y.reshape((len(test_y), 1))
inv_y
=
concatenate
((
test_y
,
test_X
[:,
1
:]),
axis
=
1
)
print
(
"inv_y"
,
inv_y
.
shape
)
inv_y
=
scaler
.
inverse_transform
(
inv_y
)
inv_y
=
inv_y
[:,
0
]
# invert scaling for forecast
inv_yhat
=
concatenate
((
yhat
,
test_X
[:,
1
:]),
axis
=
1
)
print
(
"inv_yhat conc"
,
inv_yhat
.
shape
)
inv_yhat
=
scaler
.
inverse_transform
(
inv_yhat
)
inv_yhat
=
inv_yhat
[:,
0
]
# calculate RMSE
rmse
=
sqrt
(
mean_squared_error
(
inv_y
,
inv_yhat
))
print
(
'Test RMSE:
%.3
f'
%
rmse
)
\ No newline at end of file
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