#bayes #gaussian #naive #statistics #dendritic #dataset #likelihoods

dendritic-bayes

Package for doing baysian statistics

5 stable releases

1.5.0 Nov 1, 2024
1.4.0 Nov 1, 2024
1.3.0 Nov 1, 2024
1.2.0 Nov 1, 2024
1.1.0 Oct 28, 2024

#585 in Math

Download history 275/week @ 2024-10-26 150/week @ 2024-11-02 4/week @ 2024-11-09

429 downloads per month

MIT license

18KB
313 lines

Dendritic Bayesian Statistics Crate

This crate allows for common bayesian methods for regression and classification tasks. The bayes crate currently supports guassian and standard naive bayes.

Features

  • Guassian Bayes: Bayesian model that uses gaussian density function for predicting likelihoods
  • Naive Bayes: Standard naive bayes model

Disclaimer

The dendritic project is a toy machine learning library built for learning and research purposes. It is not advised by the maintainer to use this library as a production ready machine learning library. This is a project that is still very much a work in progress.

Getting Started

To get started, add this to your Cargo.toml:

[dependencies]
dendritic-bayes = "1.1.0"

Example Usage

This is an example of using both the naive and gaussian bayes models

use dendritic_ndarray::ndarray::NDArray;
use dendritic_ndarray::ops::*;
use dendritic_bayes::naive_bayes::*;
use dendritic_bayes::gaussian_bayes::*;


fn main() {
    // Load datasets from saved ndarray
    let x_path = "data/weather_multi_feature/inputs";
    let y_path = "data/weather_multi_feature/outputs";

    // Load saved ndarrays in memory
    let features = NDArray::load(x_path).unwrap();
    let target = NDArray::load(y_path).unwrap();

    // Create instance of naive bayes model
    let mut nb_clf = NaiveBayes::new(
        &features,
        &target
    ).unwrap();

    // Create instance of guassian bayes model
    let mut gb_clf = GaussianNB::new(
        &features,
        &target
    ).unwrap();
    
    // Make prediction with first row of features
    let row1 = features.axis(0, 0).unwrap();
    let nb_pred = nb_clf.fit(row1.clone());
    let gb_pred = gb_clf.fit(row1.clone()); // This will take in references eventually
}

Dependencies

~1.4–2.4MB
~48K SLoC