Retrieval Precision¶
Module Interface¶
- class torchmetrics.RetrievalPrecision(empty_target_action='neg', ignore_index=None, k=None, adaptive_k=False, **kwargs)[source]
Computes IR Precision.
Works with binary target data. Accepts float predictions from a model output.
As input to
forwardandupdatethe metric accepts the following input:preds(Tensor): A float tensor of shape(N, ...)target(Tensor): A long or bool tensor of shape(N, ...)indexes(Tensor): A long tensor of shape(N, ...)which indicate to which query a prediction belongs
As output to
forwardandcomputethe metric returns the following output:p2(Tensor): A single-value tensor with the precision (atk) of the predictionspredsw.r.t. the labelstarget
All
indexes,predsandtargetmust have the same dimension and will be flatten at the beginning, so that for example, a tensor of shape(N, M)is treated as(N * M, ). Predictions will be first grouped byindexesand then will be computed as the mean of the metric over each query.- Parameters
Specify what to do with queries that do not have at least a positive
target. Choose from:'neg': those queries count as0.0(default)'pos': those queries count as1.0'skip': skip those queries; if all queries are skipped,0.0is returned'error': raise aValueError
ignore_index¶ (
Optional[int]) – Ignore predictions where the target is equal to this number.k¶ (
Optional[int]) – consider only the top k elements for each query (default:None, which considers them all)adaptive_k¶ (
bool) – adjustktomin(k, number of documents)for each querykwargs¶ (
Any) – Additional keyword arguments, see Advanced metric settings for more info.
- Raises
ValueError – If
empty_target_actionis not one oferror,skip,negorpos.ValueError – If
ignore_indexis not None or an integer.ValueError – If
kis not None or an integer larger than 0.ValueError – If
adaptive_kis not boolean.
Example
>>> from torchmetrics import RetrievalPrecision >>> indexes = tensor([0, 0, 0, 1, 1, 1, 1]) >>> preds = tensor([0.2, 0.3, 0.5, 0.1, 0.3, 0.5, 0.2]) >>> target = tensor([False, False, True, False, True, False, True]) >>> p2 = RetrievalPrecision(k=2) >>> p2(preds, target, indexes=indexes) tensor(0.5000)
Initializes internal Module state, shared by both nn.Module and ScriptModule.
Functional Interface¶
- torchmetrics.functional.retrieval_precision(preds, target, k=None, adaptive_k=False)[source]
Computes the precision metric (for information retrieval). Precision is the fraction of relevant documents among all the retrieved documents.
predsandtargetshould be of the same shape and live on the same device. If notargetisTrue,0is returned.targetmust be either bool or integers andpredsmust befloat, otherwise an error is raised. If you want to measure Precision@K,kmust be a positive integer.- Parameters
preds¶ (
Tensor) – estimated probabilities of each document to be relevant.target¶ (
Tensor) – ground truth about each document being relevant or not.k¶ (
Optional[int]) – consider only the top k elements (default:None, which considers them all)adaptive_k¶ (
bool) – adjust k to min(k, number of documents) for each query
- Return type
- Returns
a single-value tensor with the precision (at
k) of the predictionspredsw.r.t. the labelstarget.- Raises
ValueError – If
kis not None or an integer larger than 0.ValueError – If
adaptive_kis not boolean.
Example
>>> preds = tensor([0.2, 0.3, 0.5]) >>> target = tensor([True, False, True]) >>> retrieval_precision(preds, target, k=2) tensor(0.5000)