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title: accuracyk | |
datasets: | |
- | |
tags: | |
- evaluate | |
- metric | |
- accuracy | |
description: "computes the accuracy at k for a set of predictions as labels" | |
sdk: gradio | |
sdk_version: 3.0.2 | |
app_file: app.py | |
pinned: false | |
# accuracyk | |
## Metric Description | |
Computes the accuracy at k for a set of predictions. The accuracy at k is the number of instances where the real label is in the set of the k most probable | |
classes. | |
The parameter k is inferred from the shape of the array passed. If you want the accuracy at 5 the shape needs to be (N, 5) where N is the number of examples. | |
## How to Use | |
``` | |
predictions = np.array([ | |
[0, 7, 1, 3, 5], | |
[0, 2, 9, 8, 4], | |
[8, 4, 0, 1, 3], | |
]) | |
references = np.array([ | |
3, | |
5, | |
0 | |
]) | |
results = accuracyk.compute(predictions=predictions, references=references) | |
# 2/3 of the labels are in the corresponding rows | |
# the shape of the array predictions is (3, 5) so accuracy at 5 has been computed | |
# { accuracy: 0.6 } | |
``` | |
### Inputs | |
- **predictions**: An array of shape (N, K) where N is the number of examples and K is the desired k (5 for accuracy at 5) | |
- **references**: An array of the true labels for the examples | |
### Output Values | |
The metric returns outputs between 0 and 1. With 0 being that no value is in its corresponding row and 1 being that every value occurs in its row (higher is better). | |
### Examples | |
```python | |
>>> accuracyk = evaluate.load("KevinSpaghetti/accuracyk") | |
>>> # with numpy arrays | |
>>> predictions = np.array([ | |
>>> [0, 7, 1, 3, 5], | |
>>> [0, 2, 9, 8, 4], | |
>>> [8, 4, 0, 1, 3], | |
>>> ]) | |
>>> references = np.array([ | |
>>> 3, | |
>>> 4, | |
>>> 0 | |
>>> ]) | |
>>> results = accuracyk.compute(predictions=predictions, references=references) | |
{ accuracy: 1 } # every label is in its row | |
>>> # With lists | |
>>> predictions = [ | |
>>> [0, 7, 1, 3, 5], | |
>>> [0, 2, 9, 8, 4], | |
>>> [8, 4, 0, 1, 3], | |
>>> ] | |
>>> references = [ | |
>>> 3, | |
>>> 5, | |
>>> 0 | |
>>> ] | |
>>> results = accuracyk.compute(predictions=predictions, references=references) | |
{ accuracy: 0.6 } | |
>>> # 3 is in the first row, | |
>>> # 5 is not in the second row, | |
>>> # 0 is in the third row | |
>>> # with numpy for a batch of examples | |
>>> k=5 | |
>>> # get the 5 highest probabilities | |
>>> top5_probs = np.argpartition(logits, -k, axis=-1)[:, -k:] | |
>>> results = accuracyk.compute(references=top5_probs, predictions=labels) | |
>>> # computing the accuracy at 1 | |
>>> predictions = np.array([ 3, 8, 1 ]) | |
>>> references = np.array([ 3, 4, 0 ]) | |
>>> results = accuracyk.compute(predictions=np.expand_dims(predictions, axis=1), references=references) | |
``` |