Rolling¶
Wrapper for computing metrics over a window.
This wrapper metric allows you to apply a metric over a window of observations. Under the hood, a buffer with the window_size
most recent pairs of (y_true, y_pred)
is memorised. When the buffer is full, the oldest pair is removed and the revert
method of the metric is called with said pair.
You should use metrics.Rolling
to evaluate a metric over a window of fixed sized. You can use metrics.TimeRolling
to instead evaluate a metric over a period of time.
Parameters¶
-
metric (river.metrics.base.Metric)
A metric.
-
window_size (int)
The number of most recent
(y_true, y_pred)
pairs on which to evaluate the metric.
Attributes¶
-
bigger_is_better
Indicate if a high value is better than a low one or not.
-
metric
Gives access to the wrapped metric.
-
requires_labels
-
size
-
works_with_weights
Indicate whether the model takes into consideration the effect of sample weights
Examples¶
>>> from river import metrics
>>> y_true = [3, -0.5, 2, 7]
>>> y_pred = [2.5, 0.0, 2, 8]
>>> metric = metrics.Rolling(metrics.MSE(), window_size=2)
>>> for yt, yp in zip(y_true, y_pred):
... print(metric.update(yt, yp))
MSE: 0.25 (rolling 2)
MSE: 0.25 (rolling 2)
MSE: 0.125 (rolling 2)
MSE: 0.5 (rolling 2)
Methods¶
append
clone
Return a fresh estimator with the same parameters.
The clone has the same parameters but has not been updated with any data. This works by looking at the parameters from the class signature. Each parameter is either - recursively cloned if it's a River classes. - deep-copied via copy.deepcopy
if not. If the calling object is stochastic (i.e. it accepts a seed parameter) and has not been seeded, then the clone will not be idempotent. Indeed, this method's purpose if simply to return a new instance with the same input parameters.
extend
get
Return the current value of the metric.
popleft
revert
Revert the metric.
Parameters
- y_true
- y_pred
- sample_weight – defaults to
1.0
update
Update the metric.
Parameters
- y_true
- y_pred
- sample_weight – defaults to
1.0
works_with
Indicates whether or not a metric can work with a given model.
Parameters
- model (river.base.estimator.Estimator)