This is implementation of the Focal Loss[1] to be used with LightGBM.
The companion Medium post can be found here.
The Focal Loss for LightGBM[2] can be simply coded as:
def focal_loss_lgb(y_pred, dtrain, alpha, gamma):
a,g = alpha, gamma
y_true = dtrain.label
def fl(x,t):
p = 1/(1+np.exp(-x))
return -( a*t + (1-a)*(1-t) ) * (( 1 - ( t*p + (1-t)*(1-p)) )**g) * ( t*np.log(p)+(1-t)*np.log(1-p) )
partial_fl = lambda x: fl(x, y_true)
grad = derivative(partial_fl, y_pred, n=1, dx=1e-6)
hess = derivative(partial_fl, y_pred, n=2, dx=1e-6)
return grad, hess
to use it one would need the corresponding evaluation function:
def focal_loss_lgb_eval_error(y_pred, dtrain, alpha, gamma):
a,g = alpha, gamma
y_true = dtrain.label
p = 1/(1+np.exp(-y_pred))
loss = -( a*y_true + (1-a)*(1-y_true) ) * (( 1 - ( y_true*p + (1-y_true)*(1-p)) )**g) * ( y_true*np.log(p)+(1-y_true)*np.log(1-p) )
return 'focal_loss', np.mean(loss), False
And to use it, simply:
focal_loss = lambda x,y: focal_loss_lgb(x, y, 0.25, 1.)
eval_error = lambda x,y: focal_loss_lgb_eval_error(x, y, 0.25, 1.)
lgbtrain = lgb.Dataset(X_tr, y_tr, free_raw_data=True)
lgbeval = lgb.Dataset(X_val, y_val)
params = {'learning_rate':0.1, 'num_boost_round':10}
model = lgb.train(params, lgbtrain, valid_sets=[lgbeval], fobj=focal_loss, feval=eval_error )
In the examples
directory you will find more details, including how to use Hyperopt in combination with LightGBM and the Focal Loss, or how to adapt the Focal Loss to a multi-class classification problem.
Any comment: [email protected]
[1] Tsung-Yi Lin, Priya Goyal, Ross Girshick, Kaiming He, Piotr Dollár. Focal Loss for Dense Object Detection
[2] Guolin Ke, Qi Meng Thomas Finley, et al., 2017. LightGBM: A Highly Efficient Gradient Boosting Decision Tree