Computes focal cross-entropy loss between true labels and predictions.
Source:R/losses.R
loss_binary_focal_crossentropy.Rd
According to Lin et al., 2018, it helps to apply a focal factor to down-weight easy examples and focus more on hard examples. By default, the focal tensor is computed as follows:
focal_factor = (1 - output)^gamma
for class 1
focal_factor = output^gamma
for class 0
where gamma
is a focusing parameter. When gamma
= 0, there is no focal
effect on the binary crossentropy loss.
If apply_class_balancing == TRUE
, this function also takes into account a
weight balancing factor for the binary classes 0 and 1 as follows:
weight = alpha
for class 1 (target == 1
)
weight = 1 - alpha
for class 0
where alpha
is a float in the range of [0, 1]
.
Binary cross-entropy loss is often used for binary (0 or 1) classification tasks. The loss function requires the following inputs:
y_true
(true label): This is either 0 or 1.y_pred
(predicted value): This is the model's prediction, i.e, a single floating-point value which either represents a logit, (i.e, value in[-inf, inf]
whenfrom_logits=TRUE
) or a probability (i.e, value in[0., 1.]
whenfrom_logits=FALSE
).
According to Lin et al., 2018, it helps to apply a "focal factor" to down-weight easy examples and focus more on hard examples. By default, the focal tensor is computed as follows:
focal_factor = (1 - output) ** gamma
for class 1
focal_factor = output ** gamma
for class 0
where gamma
is a focusing parameter. When gamma=0
, this function is
equivalent to the binary crossentropy loss.
Usage
loss_binary_focal_crossentropy(
y_true,
y_pred,
apply_class_balancing = FALSE,
alpha = 0.25,
gamma = 2,
from_logits = FALSE,
label_smoothing = 0,
axis = -1L,
...,
reduction = "sum_over_batch_size",
name = "binary_focal_crossentropy",
dtype = NULL
)
Arguments
- y_true
Ground truth values, of shape
(batch_size, d0, .. dN)
.- y_pred
The predicted values, of shape
(batch_size, d0, .. dN)
.- apply_class_balancing
A bool, whether to apply weight balancing on the binary classes 0 and 1.
- alpha
A weight balancing factor for class 1, default is
0.25
as mentioned in reference Lin et al., 2018. The weight for class 0 is1.0 - alpha
.- gamma
A focusing parameter used to compute the focal factor, default is
2.0
as mentioned in the reference Lin et al., 2018.- from_logits
Whether to interpret
y_pred
as a tensor of logit values. By default, we assume thaty_pred
are probabilities (i.e., values in[0, 1]
).- label_smoothing
Float in
[0, 1]
. When0
, no smoothing occurs. When >0
, we compute the loss between the predicted labels and a smoothed version of the true labels, where the smoothing squeezes the labels towards0.5
. Larger values oflabel_smoothing
correspond to heavier smoothing.- axis
The axis along which to compute crossentropy (the features axis). Defaults to
-1
.- ...
For forward/backward compatability.
- reduction
Type of reduction to apply to the loss. In almost all cases this should be
"sum_over_batch_size"
. Supported options are"sum"
,"sum_over_batch_size"
orNULL
.- name
Optional name for the loss instance.
- dtype
The dtype of the loss's computations. Defaults to
NULL
, which means usingconfig_floatx()
.config_floatx()
is a"float32"
unless set to different value (viaconfig_set_floatx()
). If akeras$DTypePolicy
is provided, then thecompute_dtype
will be utilized.
Examples
y_true <- rbind(c(0, 1), c(0, 0))
y_pred <- rbind(c(0.6, 0.4), c(0.4, 0.6))
loss <- loss_binary_focal_crossentropy(y_true, y_pred, gamma = 2)
loss
With the compile()
API:
model %>% compile(
loss = loss_binary_focal_crossentropy(
gamma = 2.0, from_logits = TRUE),
...
)
As a standalone function:
# Example 1: (batch_size = 1, number of samples = 4)
y_true <- op_array(c(0, 1, 0, 0))
y_pred <- op_array(c(-18.6, 0.51, 2.94, -12.8))
loss <- loss_binary_focal_crossentropy(gamma = 2, from_logits = TRUE)
loss(y_true, y_pred)
# Apply class weight
loss <- loss_binary_focal_crossentropy(
apply_class_balancing = TRUE, gamma = 2, from_logits = TRUE)
loss(y_true, y_pred)
# Example 2: (batch_size = 2, number of samples = 4)
y_true <- rbind(c(0, 1), c(0, 0))
y_pred <- rbind(c(-18.6, 0.51), c(2.94, -12.8))
# Using default 'auto'/'sum_over_batch_size' reduction type.
loss <- loss_binary_focal_crossentropy(
gamma = 3, from_logits = TRUE)
loss(y_true, y_pred)
# Apply class weight
loss <- loss_binary_focal_crossentropy(
apply_class_balancing = TRUE, gamma = 3, from_logits = TRUE)
loss(y_true, y_pred)
# Using 'sample_weight' attribute with focal effect
loss <- loss_binary_focal_crossentropy(
gamma = 3, from_logits = TRUE)
loss(y_true, y_pred, sample_weight = c(0.8, 0.2))
# Apply class weight
loss <- loss_binary_focal_crossentropy(
apply_class_balancing = TRUE, gamma = 3, from_logits = TRUE)
loss(y_true, y_pred, sample_weight = c(0.8, 0.2))
# Using 'sum' reduction` type.
loss <- loss_binary_focal_crossentropy(
gamma = 4, from_logits = TRUE,
reduction = "sum")
loss(y_true, y_pred)
# Apply class weight
loss <- loss_binary_focal_crossentropy(
apply_class_balancing = TRUE, gamma = 4, from_logits = TRUE,
reduction = "sum")
loss(y_true, y_pred)
# Using 'none' reduction type.
loss <- loss_binary_focal_crossentropy(
gamma = 5, from_logits = TRUE,
reduction = NULL)
loss(y_true, y_pred)
# Apply class weight
loss <- loss_binary_focal_crossentropy(
apply_class_balancing = TRUE, gamma = 5, from_logits = TRUE,
reduction = NULL)
loss(y_true, y_pred)
See also
Other losses: Loss()
loss_binary_crossentropy()
loss_categorical_crossentropy()
loss_categorical_focal_crossentropy()
loss_categorical_hinge()
loss_cosine_similarity()
loss_ctc()
loss_dice()
loss_hinge()
loss_huber()
loss_kl_divergence()
loss_log_cosh()
loss_mean_absolute_error()
loss_mean_absolute_percentage_error()
loss_mean_squared_error()
loss_mean_squared_logarithmic_error()
loss_poisson()
loss_sparse_categorical_crossentropy()
loss_squared_hinge()
loss_tversky()
metric_binary_crossentropy()
metric_binary_focal_crossentropy()
metric_categorical_crossentropy()
metric_categorical_focal_crossentropy()
metric_categorical_hinge()
metric_hinge()
metric_huber()
metric_kl_divergence()
metric_log_cosh()
metric_mean_absolute_error()
metric_mean_absolute_percentage_error()
metric_mean_squared_error()
metric_mean_squared_logarithmic_error()
metric_poisson()
metric_sparse_categorical_crossentropy()
metric_squared_hinge()