stress_at_work_analysis/presentation/results_presentation.py

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Python
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2022-11-16 21:36:43 +01:00
# %%
import datetime
import importlib
import os
import sys
import numpy as np
import matplotlib.pyplot as plt
import pandas as pd
import seaborn as sns
import yaml
from pyprojroot import here
from sklearn import linear_model, svm, kernel_ridge, gaussian_process, ensemble
from sklearn.model_selection import LeaveOneGroupOut, cross_val_score, cross_validate, cross_val_predict
from sklearn.metrics import mean_squared_error, r2_score
from sklearn.impute import SimpleImputer
from sklearn.dummy import DummyRegressor
from sklearn.decomposition import PCA
from IPython.core.interactiveshell import InteractiveShell
InteractiveShell.ast_node_interactivity = "all"
nb_dir = os.path.split(os.getcwd())[0]
if nb_dir not in sys.path:
sys.path.append(nb_dir)
import machine_learning.helper
# %%
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segment = "intradaily_30_min"
target = "JCQ_job_demand"
csv_name = "./data/" + segment + "_all_targets/input_" + target + "_mean.csv"
#csv_name = "./data/daily_18_hours_all_targets/input_JCQ_job_demand_mean.csv"
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# %%
data_x, data_y, data_groups = machine_learning.helper.prepare_model_input(csv_name)
# %%
data_y.head()
# %%
scores = machine_learning.helper.run_all_models(csv_name)
# %% jupyter={"source_hidden": true}
logo = LeaveOneGroupOut()
logo.get_n_splits(
data_x,
data_y,
groups=data_groups,
)
# %% [markdown]
# ### Baseline: Dummy Regression (mean)
dummy_regr = DummyRegressor(strategy="mean")
# %% jupyter={"source_hidden": true}
lin_reg_scores = cross_validate(
dummy_regr,
X=data_x,
y=data_y,
groups=data_groups,
cv=logo,
n_jobs=-1,
scoring=('r2', 'neg_mean_squared_error', 'neg_mean_absolute_error', 'neg_root_mean_squared_error')
)
print("Negative Mean Squared Error", np.median(lin_reg_scores['test_neg_mean_squared_error']))
print("Negative Mean Absolute Error", np.median(lin_reg_scores['test_neg_mean_absolute_error']))
print("Negative Root Mean Squared Error", np.median(lin_reg_scores['test_neg_root_mean_squared_error']))
print("R2", np.median(lin_reg_scores['test_r2']))
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##################
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# %%
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chosen_model = "Random Forest"
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rfr = ensemble.RandomForestRegressor(max_features=0.3, n_jobs=-1)
rfr_score = cross_validate(
rfr,
X=data_x,
y=data_y,
groups=data_groups,
cv=logo,
n_jobs=-1,
scoring=('r2', 'neg_mean_squared_error', 'neg_mean_absolute_error', 'neg_root_mean_squared_error')
)
print("Negative Mean Squared Error", np.median(rfr_score['test_neg_mean_squared_error']))
print("Negative Mean Absolute Error", np.median(rfr_score['test_neg_mean_absolute_error']))
print("Negative Root Mean Squared Error", np.median(rfr_score['test_neg_root_mean_squared_error']))
print("R2", np.median(rfr_score['test_r2']))
# %%
y_predicted = cross_val_predict(rfr, data_x, data_y, groups=data_groups, cv=logo)
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#########################
# %%
chosen_model = "Bayesian Ridge"
bayesian_ridge_reg = linear_model.BayesianRidge()
bayesian_ridge_reg_score = cross_validate(
bayesian_ridge_reg,
X=data_x,
y=data_y,
groups=data_groups,
cv=logo,
n_jobs=-1,
scoring=('r2', 'neg_mean_squared_error', 'neg_mean_absolute_error', 'neg_root_mean_squared_error')
)
print("Negative Mean Absolute Error", np.median(bayesian_ridge_reg_score['test_neg_mean_absolute_error']))
print("Negative Root Mean Squared Error", np.median(bayesian_ridge_reg_score['test_neg_root_mean_squared_error']))
print("R2", np.median(bayesian_ridge_reg_score['test_r2']))
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# %%
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y_predicted = cross_val_predict(bayesian_ridge_reg, data_x, data_y, groups=data_groups, cv=logo)
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# %%
data_y = pd.DataFrame(pd.concat([data_y, data_groups], axis=1))
data_y.rename(columns={"target": "y_true"}, inplace=True)
data_y["y_predicted"] = y_predicted
# %%
data_y.head()
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# %%
g1 = sns.relplot(data=data_y, x="y_true", y="y_predicted")
#g1.set_axis_labels("true", "predicted")
#g1.map(plt.axhline, y=0, color=".7", dashes=(2, 1), zorder=0)
#g1.map(plt.axline, xy1=(0,0), slope=1)
g1.set(title=",".join([segment, target, chosen_model]))
display(g1)
g1.savefig("_".join([segment, target, chosen_model, "_relplot.pdf"]))
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# %%
data_y_long = pd.wide_to_long(
data_y.reset_index(),
i=["local_segment", "pid"],
j="value",
stubnames="y",
sep="_",
suffix=".+",
)
# %%
data_y_long.head()
# %%
g2 = sns.displot(data_y_long, x="y", hue="value", binwidth=0.1, height=5, aspect=1.5)
sns.move_legend(g2, "upper left", bbox_to_anchor=(.55, .45))
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g2.set(title=",".join([segment, target, chosen_model]))
g2.savefig("_".join([segment, target, chosen_model, "hist.pdf"]))
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# %%
pca = PCA(n_components=2)
pca.fit(data_x)
print(pca.explained_variance_ratio_)
# %%
data_x_pca = pca.fit_transform(data_x)
data_pca = pd.DataFrame(pd.concat([data_y.reset_index()["y_true"], pd.DataFrame(data_x_pca, columns = {"pca_0", "pca_1"})], axis=1))
# %%
data_pca
# %%
g3 = sns.relplot(data = data_pca, x = "pca_0", y = "pca_1", hue = "y_true", palette = sns.color_palette("Spectral", as_cmap=True))
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g3.set(title=",".join([segment, target, chosen_model]) + "\n variance explained = " + str(round(sum(pca.explained_variance_ratio_), 2)))
g3.savefig("_".join([segment, target, chosen_model, "_PCA.pdf"]))
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# %%