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# Email: patricia.alonsod@upm.es
# Date: 05/08/2025
# Package imports
import os
import sys
import sympy
import pickle
import numpy as np
import pandas as pd
import matplotlib.pyplot as plt
import matplotlib.patches as mpatches
from tqdm import tqdm
from kan import ex_round
from copy import deepcopy
from tueplots import bundles
current_dir = os.path.dirname(os.path.abspath(__file__))
parent_dir = os.path.abspath(os.path.join(current_dir, ".."))
sys.path.append(parent_dir)
from src.data import load_data
from src.utils import get_config, create_results_folder
from src.models.models import Kan_model
from src.models.model_utils import get_metrics
from src.representation import plot_binary_explanation_plot, plot_sorted_variances, radar_factory
def run_kan_gam():
_ = model.run_model(x_train, x_test, y_train, y_test)
predicted_prob_test = model.predict_proba(x_test.to_numpy())
pred_proba_train = model.predict_proba(x_train.to_numpy())
y_pred_test = model.predict(x_test.to_numpy())
y_pred_train = model.predict(x_train.to_numpy())
if predicted_prob_test.shape[1] == 2:
binary_data = True
n_classes_data = 2
n_logits_data = 1
else:
binary_data = False
n_classes_data = predicted_prob_test.shape[1]
n_logits_data = n_classes_data
test_metrics = get_metrics(y_test.to_numpy(), y_pred_test, predicted_prob_test)
train_metrics = get_metrics(y_train.to_numpy(), y_pred_train, pred_proba_train)
return predicted_prob_test, binary_data, n_classes_data, n_logits_data, test_metrics, train_metrics
def get_patient_values(formula, x_in):
x = x_in.to_numpy()
if isinstance(formula, sympy.Float): # WE have a constant!
delta = np.zeros((x.shape[0], x.shape[1] + 1))
delta[:, -1] = float(formula) # There is only a constant term!
else:
delta = np.zeros(
(x.shape[0], x.shape[1] + 1)) # One input per covariate, one extra output for the constant term
for i in range(x.shape[0]): # For each patient
for fs in formula.args:
formula_sum_term = deepcopy(fs)
if isinstance(formula_sum_term, sympy.Float): # We have a constant!
delta[i, -1] = float(formula_sum_term)
else: # Since it is a KAAM, it depends on a single variable
assert len(formula_sum_term.free_symbols) == 1
variable_in_the_expresion = list(formula_sum_term.free_symbols)[0]
variable_index = x_in.columns.get_loc(str(variable_in_the_expresion))
delta[i, variable_index] += float(
formula_sum_term.subs(variable_in_the_expresion, x[i, variable_index]))
delta = pd.DataFrame(delta, columns=x_in.columns.tolist() + ['const'])
return delta
def adjust_polynomial(tr_x, tr_y, test_x, test_y, metrics_train, metrics_test, binary_dataset, n_logits_dataset, results_folder, dataset_name):
# lib = ['x', 'x^2', 'x^3', 'x^4', 'x^5'] # Polynomial model, used because it tends to provide a nice symbolic formula
model.model(model.dataset['train_input']) # To have activations updated!
model.model.auto_symbolic() # Add the lib in here if desired
formula = model.model.symbolic_formula()[0] # We have several formulae, one per logit!
formula = [ex_round(f, 3) for f in formula] # Number of digits to approximate
if binary_dataset:
delta_formula = [formula[1] - formula[0]] # Keep a single formula (this is the delta)
else:
delta_formula = [f for f in formula] # Keep all the formulae, one per logit. IMPORTANT NOTE: We could simplify the formulae, but this may get rid of the additive separability property!!
# In the delta_formula, replace x_i by its name
for i, col in enumerate(tr_x.columns):
for j in range(n_logits_dataset):
delta_formula[j] = delta_formula[j].subs(sympy.symbols(f'x_{i + 1}'), sympy.symbols(col))
# Save formula as a text file
with open(os.path.join(results_folder, dataset_name, 'formula.txt'), 'w') as f:
for i in range(n_logits_dataset):
f.write(f"Logit {i}: {delta_formula[i]}\n")
f.write(f"Logit {i} Latex: {sympy.latex(delta_formula[i])}\n")
# Since the formula may have pruned variables, we keep only the variables that are present in the formula
actual_vars = []
for f in delta_formula:
actual_vars += [str(s) for s in f.free_symbols]
actual_vars = list(set(actual_vars)) # Remove duplicates
tr_x = tr_x[actual_vars]
test_x = test_x[actual_vars]
delta_train, delta_test = [], []
for i in range(n_logits_dataset):
d = get_patient_values(delta_formula[i], tr_x)
delta_train.append(d)
d.to_csv(os.path.join(results_folder, dataset_name, f'delta_train_{i}.csv'), index=False)
d = get_patient_values(delta_formula[i], test_x)
delta_test.append(d)
d.to_csv(os.path.join(results_folder, dataset_name, f'delta_test_{i}.csv'), index=False)
if binary_dataset:
proba_train_numpy = 1 / (1 + np.exp(-delta_train[0].sum(axis=1).values))
proba_test_numpy = 1 / (1 + np.exp(-delta_test[0].sum(axis=1).values))
values_train_numpy = (proba_train_numpy > 0.5).astype(int)
values_test_numpy = (proba_test_numpy > 0.5).astype(int)
else:
proba_train_numpy = np.array(
[np.exp(np.array(d).sum(axis=1)) / np.sum(np.exp(np.array(delta_train).sum(axis=2)), axis=0) for d
in delta_train]).T
proba_test_numpy = np.array(
[np.exp(np.array(d).sum(axis=1)) / np.sum(np.exp(np.array(delta_test).sum(axis=2)), axis=0) for d in
delta_test]).T
values_train_numpy = np.argmax(proba_train_numpy, axis=1)
values_test_numpy = np.argmax(proba_test_numpy, axis=1)
metrics_train_numpy = get_metrics(tr_y, values_train_numpy, proba_train_numpy)
metrics_test_numpy = get_metrics(test_y, values_test_numpy, proba_test_numpy)
print("\n--------Metrics comparison--------")
print(f"Train metrics without formula: {metrics_train}")
print(f"Test metrics without formula: {metrics_test}")
print(f"Train metrics with formula: {metrics_train_numpy}")
print(f"Test metrics with formula: {metrics_test_numpy}")
# Save metrics results in df
metrics_df = pd.DataFrame([metrics_train, metrics_test, metrics_train_numpy, metrics_test_numpy],
index=['train', 'test', 'train_formula', 'test_formula'])
metrics_df.to_csv(os.path.join(args['results_folder'], dataset_name, 'metrics.csv'))
if binary_dataset:
with plt.rc_context({**bundles.icml2024(column='half', nrows=1, ncols=1)}):
plot_binary_explanation_plot(test_y,
proba_test_numpy,
['0', '1'],
0.5,
os.path.join(args['results_folder'], dataset_name, 'prob_plot_formula.pdf'),
title='Probability of positive class')
plt.close()
print(f"\nNumber of variables in formula: {len(actual_vars)}\nVariables: {actual_vars}")
for i in range(n_logits_dataset):
print(f"\nFormula for logit {i}: {delta_formula[i]}")
return delta_formula, delta_train, delta_test, proba_train_numpy, proba_test_numpy, tr_x, test_x
if __name__ == '__main__':
# Get the configuration
args = get_config('interpretability')
create_results_folder(args['results_folder'], args)
for dataset in args['datasets']:
# Check if the best model is saved
if os.path.exists(os.path.join(args['base_folder'], 'results_performance', dataset, 'kan_gam.pkl')):
with open(os.path.join(args['base_folder'], 'results_performance', dataset, 'kan_gam.pkl'), 'rb') as f:
metrics = pickle.load(f)
print(f"\n\n------------Model for dataset {dataset} found------------\nUsing the following parameters:")
for param in metrics:
if param not in ['accuracy', 'precision', 'recall', 'f1', 'roc_auc', 'time', 'dataset']:
print(f"{param}: {metrics[param]}")
print('\n')
model = Kan_model(hidden_dim=metrics['hidden_dim'],
batch_size=metrics['batch_size'],
grid=metrics['grid'],
k=metrics['k'],
seed=metrics['seed'],
lr=metrics['lr'],
early_stop=metrics['early_stop'],
steps=metrics['steps'],
lamb=metrics['lamb'],
lamb_entropy=metrics['lamb_entropy'],
weight=metrics['weight'],
sparse_init=metrics['sparse_init'],
mult_kan=metrics['mult_kan'])
else:
model = Kan_model()
print(f"Model for dataset {dataset} not found. Using default parameters.")
# Load the data and run model
x_train, x_test, y_train, y_test = load_data(dataset, args)
pred_prob_test, binary, n_classes, n_logits, test_m, train_m = run_kan_gam()
# Rename y_train to have a "class_target" column
y_train = pd.DataFrame(y_train.values, columns=['class_target'])
y_test = pd.DataFrame(y_test.values, columns=['class_target'])
# Represent predictions in histograms
if binary:
plot_binary_explanation_plot(y_test,
pred_prob_test[:, 1],
['0', '1'],
0.5,
os.path.join(args['results_folder'], dataset, 'prob_plot.pdf'),
title='Probability of positive class')
with plt.rc_context({**bundles.icml2024(column='half', nrows=1, ncols=1, usetex=True)}):
model.model.plot(folder=os.path.join(args['results_folder'], dataset, 'kan'),
in_vars=x_train.columns.tolist(),
out_vars=[f'logit_{i}' for i in range(n_classes)],
varscale=0.2,
scale=1)
plt.savefig(os.path.join(args['results_folder'], dataset, 'kan.pdf'), bbox_inches='tight', dpi=300)
plt.close()
# Adjust a polynomial model
(delta_formula, delta_train, delta_test, proba_train_numpy, proba_test_numpy, x_train,x_test) = adjust_polynomial(x_train, y_train, x_test, y_test, train_m, test_m, binary, n_logits, args['results_folder'], dataset)
# Plot of the sorted variances in training and testing for each logit (feat imp is the variance of the delta vals)
plot_sorted_variances(x_train, x_test, binary, delta_train, delta_test, n_logits, args, dataset)
##### PATIENTS #####
# Create a folder for the patients
patients_results_folder = os.path.join(args['results_folder'], dataset, 'patients')
os.makedirs(patients_results_folder, exist_ok=True)
if binary: # Add a dimension to the proba arrays
proba_train_numpy = proba_train_numpy[:, None]
proba_test_numpy = proba_test_numpy[:, None]
n_dists = args['n_dists']
max_atribs_radar = args['max_atribs_radar']
max_pats_to_save = args['max_pats_to_save']
max_plot_curves = args['max_plot_curves']
for l in range(n_logits):
logit = 1 if binary else l
print(f"Processing logit {logit}")
# Get the most important features for the radar plot, be careful to use only training data!
variances = delta_train[l].var(axis=0)
all_cols = delta_train[l].columns.tolist()
idx_vars = np.argsort(variances.values)[::-1]
num_of_zero_var = (variances < 1e-6).sum()
idx_vars = idx_vars[:-num_of_zero_var]
if delta_train[l].shape[1] > max_atribs_radar:
idx_vars = idx_vars[:max_atribs_radar]
for i in tqdm(range(min(x_test.shape[0], max_pats_to_save))):
actual_label = y_test.iloc[i]['class_target']
current_patient_info = np.concatenate((x_test.iloc[i].values, [proba_test_numpy[i][l], actual_label]))
# Find the n_dists closest patients in the training set
dists = np.linalg.norm(delta_train[l] - delta_test[l].iloc[i], axis=1)
idx_closest = np.argsort(dists)[:n_dists].tolist()
pred_prob = (1 / (1 + np.exp(-delta_train[l].iloc[idx_closest].sum(axis=1)))).values
real_label = y_train.iloc[idx_closest].values
closest_data = x_train.iloc[idx_closest].values
closest_data = np.concatenate((closest_data, pred_prob[:, None], real_label), axis=1)
closest_data = np.vstack((current_patient_info[None, :], closest_data)) # Add the current patient as the first row
new_df = pd.DataFrame(closest_data, columns=x_train.columns.tolist() + ['pred_prob', 'real_label'])
# Limit all new_df values to having 3 decimal numbers at most
new_df = new_df.map(lambda x: round(x, 3) if isinstance(x, float) else x)
new_df.to_csv(os.path.join(patients_results_folder, f'patient_{i}_closest_{n_dists}_logit_{logit}.csv'), index=False)
# Prepare the radar plot, show only the attributes with highest variance
# Change the order of idx_vars and cols_vars to have the importance in clockwise order in the plot
idx_vars = idx_vars[::-1]
cols_vars = [all_cols[i] for i in idx_vars.tolist()]
n_feats = min(max_atribs_radar, len(cols_vars)) # Number of features to show in the radar plot
if n_feats >= 3: # We need at least 3 features to plot a proper radar plot
theta = radar_factory(n_feats, frame='polygon')
if binary:
avg_proba = 1 / (1 + np.exp(-delta_train[l].mean(axis=0).sum())) * np.ones(len(cols_vars)) # Average probability (i.e., "average patient")
title = f"Test Patient \n Predicted: {proba_test_numpy[i][l]:.3f} | True: {actual_label} | Average: {avg_proba[0]:.3f}"
else:
avg_proba = np.exp(delta_train[l].mean(axis=0).sum()) / sum(
[np.exp(d.mean(axis=0).sum()) for d in delta_train]) * np.ones(len(cols_vars))
title = f"Test Patient \n Predicted: {proba_test_numpy[i][l]:.3f} | True: {actual_label} | Average: {avg_proba[0]:.3f}"
with plt.rc_context({**bundles.icml2024(column='half', ncols=1, nrows=1, usetex=True)}):
fig, ax = plt.subplots(subplot_kw=dict(projection='radar'))
ax.set_rgrids([0.2, 0.4, 0.6, 0.8])
ax.set_title(title)
# Plot the average of all train patients
_ = ax.plot(theta, avg_proba, label='Average', color='tab:blue', linewidth=0.5)
ax.fill(theta, avg_proba, alpha=0.1, color='tab:blue')
# Prepare for individual patient plotting
avg_delta = delta_train[l].mean(axis=0).values[None, :]
avg_matrix = np.repeat(avg_delta, delta_train[l].shape[1], axis=0)
# Plot the closest patients
for j in range(n_dists):
label = 'Closest patients' if j == 0 else None
np.fill_diagonal(avg_matrix, delta_train[l].iloc[idx_closest[j]].values)
if binary:
pat_proba = 1 / (1 + np.exp(-avg_matrix.sum(axis=1)))
else:
den_term = np.zeros(delta_train[0].shape[1])
for ll in range(n_logits):
den_matrix = np.repeat(delta_train[ll].mean(axis=0).values[None, :],
delta_train[ll].shape[1],
axis=0)
np.fill_diagonal(den_matrix, delta_train[ll].iloc[idx_closest[j]].values)
den_term += np.exp(den_matrix.sum(axis=1))
pat_proba = np.exp(avg_matrix.sum(axis=1)) / den_term
_ = ax.plot(theta, pat_proba[idx_vars], label=label, color='tab:green', alpha=0.5)
ax.fill(theta, pat_proba[idx_vars], alpha=0.1, color='tab:green')
# Plot the current patient
np.fill_diagonal(avg_matrix, delta_test[l].iloc[i].values)
if binary:
pat_proba = 1 / (1 + np.exp(-avg_matrix.sum(axis=1)))
else:
den_term = np.zeros(delta_train[0].shape[1])
for ll in range(n_logits):
den_matrix = np.repeat(delta_train[ll].mean(axis=0).values[None, :],
delta_train[ll].shape[1],
axis=0)
np.fill_diagonal(den_matrix, delta_test[ll].iloc[i].values)
den_term += np.exp(den_matrix.sum(axis=1))
pat_proba = np.exp(avg_matrix.sum(axis=1)) / den_term
_ = ax.plot(theta, pat_proba[idx_vars], label='Test patient', color='tab:red')
ax.fill(theta, pat_proba[idx_vars], alpha=0.1, color='tab:red')
ax.set_varlabels(cols_vars, fontsize=6)
plt.legend(loc='lower center',
bbox_to_anchor=(0.5, -0.5),
ncol=3) # Note: this can be uncommented, but may clutter the plot
plt.savefig(os.path.join(patients_results_folder, f'patient_{i}_radar_logit_{logit}.pdf'),
bbox_inches='tight',
dpi=600)
plt.close()
# Curves plot: show only the ones that do matter!!
# Revert again the order to have the right plot order
idx_vars = idx_vars[::-1]
cols_vars = [all_cols[i] for i in idx_vars.tolist()]
n_feats = min(len(cols_vars), max_plot_curves) # Number of features to show in the curves plot
with plt.rc_context({**bundles.icml2024(column='full', ncols=1, nrows=1, usetex=True)}):
if n_feats > 0: # There is something to show
if binary:
fig, axs = plt.subplots(n_feats + 1, 1, figsize=(3, 5.5))
x_vals = np.arange(delta_train[l].sum(axis=1).min(), delta_train[l].sum(axis=1).max(), 0.01)
theor_proba = 1 / (1 + np.exp(-x_vals))
axs[0].plot(x_vals, theor_proba, 'b', alpha=0.2)
axs[0].scatter(delta_test[l].sum(axis=1)[i], proba_test_numpy[i][l], color='r')
axs[0].set_xlabel('Logit')
axs[0].set_ylabel('Probability')
axs[0].set_title(f'Patient {i}')
else:
fig, axs = plt.subplots(n_feats, 1, figsize=(3, 5.5))
for idj, feat_name in enumerate(cols_vars):
if idj < n_feats: # Only plot the first n_feats features
if binary:
j = idj + 1 # The first plot is already used for the theoretical curve
else:
j = idj
# Keep only unique values of x_test[feat_name]
idxs = np.unique(x_train[feat_name].values, return_index=True)[1]
if n_feats > 1: # Multiple plots
axs[j].plot(x_train[feat_name].values[idxs],
delta_train[l][feat_name].values[idxs],
color='tab:blue')
axs[j].scatter(x_train[feat_name].values[idxs],
delta_train[l][feat_name].values[idxs],
color='tab:blue',
s=6,
alpha=0.4)
axs[j].scatter(x_test[feat_name].values[i],
delta_test[l][feat_name].values[i],
color='tab:red',
s=40,
alpha=1)
for jj in range(n_dists):
axs[j].scatter(x_train.iloc[idx_closest[jj]][feat_name],
delta_train[l].iloc[idx_closest[jj]][feat_name],
color='tab:green',
s=8,
alpha=1)
axs[j].set_ylabel('Contribution')
axs[j].set_xlabel(feat_name)
else: # Single plot
axs.plot(x_train[feat_name].values[idxs],
delta_train[l][feat_name].values[idxs],
color='tab:blue')
axs.scatter(x_train[feat_name].values[idxs],
delta_train[l][feat_name].values[idxs],
color='tab:blue',
s=6,
alpha=0.4)
axs.scatter(x_test[feat_name].values[i],
delta_test[l][feat_name].values[i],
color='tab:red',
s=40,
alpha=1)
for jj in range(n_dists):
axs.scatter(x_train.iloc[idx_closest[jj]][feat_name],
delta_train[l].iloc[idx_closest[jj]][feat_name],
color='tab:green',
s=8,
alpha=1)
axs.set_ylabel('Contribution')
axs.set_xlabel(feat_name)
red_patch = mpatches.Patch(color='tab:red', label='Test patient')
green_patch = mpatches.Patch(color='tab:green', label='Closest patients')
blue_patch = mpatches.Patch(color='tab:blue', label='Train patients')
plt.tight_layout(rect=[0, 0.05, 1, 1])
# TODO: Adjust legend box location based on dataset!!!
if n_feats > 1:
axs[0].set_title(f'Patient PDPs')
axs[-1].legend(handles=[red_patch, green_patch, blue_patch], loc='lower center',
bbox_to_anchor=(0.5, -1.0), ncol=3)
else:
axs.set_title(f'Patient PDPs')
axs.legend(handles=[red_patch, green_patch, blue_patch], loc='lower center',
bbox_to_anchor=(0.5, -0.7), ncol=3)
plt.rcParams.update(bundles.icml2024(usetex=False))
plt.savefig(os.path.join(patients_results_folder, f'patient_{i}_curves_logit_{logit}.pdf'),
bbox_inches='tight',
dpi=600)
plt.close()
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