[source] # Radius Neighbors Radius Neighbors is a classifier that takes the distance-weighted vote of each neighbor within a cluster of a fixed user-defined radius to make a prediction. Since the radius of the search can be constrained, Radius Neighbors is more robust to outliers than [K Nearest Neighbors](k-nearest-neighbors.md). In addition, Radius Neighbors acts as a quasi-anomaly detector by flagging samples that have 0 neighbors within the search radius. **Interfaces:** [Estimator](../estimator.md), [Learner](../learner.md), [Probabilistic](../probabilistic.md), [Persistable](../persistable.md) **Data Type Compatibility:** Depends on distance kernel ## Parameters | # | Name | Default | Type | Description | |---|---|---|---|---| | 1 | radius | 1.0 | float | The radius within which points are considered neighbors. | | 2 | weighted | false | bool | Should we consider the distances of our nearest neighbors when making predictions? | | 3 | outlierClass | '?' | string | The class label for any samples that have 0 neighbors within the specified radius. | | 4 | tree | BallTree | Spatial | The spatial tree used to run range searches. | ## Example ```php use Rubix\ML\Classifiers\RadiusNeighbors; use Rubix\ML\Graph\Trees\KDTree; use Rubix\ML\Kernels\Distance\Manhattan; $estimator = new RadiusNeighbors(50.0, true, '?', new KDTree(100, new Manhattan())); ``` ## Additional Methods Return the base spatial tree instance: ```php public tree() : Spatial ```