Neighbor-based approaches such as KDE are some of the most popular and useful density
estimation techniques. KDE can be performed in any number of dimensions, though in practice high
dimensionality can cause a degradation of performance. The KDE Modeling node and the KDE Simulation
node in watsonx.ai expose the core features and commonly used
parameters of the KDE library. The nodes are implemented in Python. 1
To use a KDE node, you must set up an upstream Type node. The KDE node will read input
values from the Type node (or from the Types of an upstream import node).
The KDE Modeling node is available under the Modeling node
palette. The KDE Modeling node generates a model nugget, and the nugget's scored values are kernel
density values from the input data.
The KDE Simulation node is available under the Outputs node
palette. The KDE Simulation node generates a KDE Gen source node that can create some records that
have the same distribution as the input data. In the KDE Gen node properties, you can specify how
many records the node will create (default is 1) and generate a random seed.
For more information about KDE, including examples, see the KDE documentation. 1
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