• Generative Model vs Discriminative Model


    In this post, we are going to compare the two types of machine learning models-generative model and discriminative model-, whose underlying ideas are quite different. Also, a typical generative classification algorithm called Gaussian Discriminant Analysis will be introduced.

    Discriminative Model

    The most basic discriminative classifier in Machine Learning is Logistic Regression, and a decision boundary is learned to segregate points from two classes in training set. When a new point comes, the algorithm classifies it by checking which side of the boundary it falls. Logistic Regression do classification by calculating p(Y|X,θ), which is modeled by:

    g is the sigmoid function. So this is the idea of Discriminative Algorithm: directly calculate p(Y|X,θ).

    Generative Model

    Generative Algorithm tries to achieve the same goal p(Y|X,θ) using another way: Bayes Rule, which is in the form of:

    The key to solve this equation is to get p(X|Y), this need building seperate models for different Y.

    When the input X is continuous random variable, we can then use the Gaussian Discriminant Analysis (GDA) model, which models p(x|y) using a multivariate normal distribution.

    If we write out them:

    then we can calculate the probability for a specific x using Bayes Rule. When X is discrete, we turn to Naive Bayes, which is also a Generative Algorithm.

    In conclusion, the idea for Generative Model is to build a model for each class, and then use Bayes Rule to back up getting P(Y|X).

    This picture shows the difference ideas of the two groups of algorithms.

  • 相关阅读:
    第一次设计作业
    项目选题报告(团队)
    第二次结队作业
    团队第一次作业
    原型设计(结对第一次)
    第二次作业——个人项目实战
    对于软件工程专业的思考
    电场与磁场
    透明层上的层或数字不透明
    Visiual Studio2012 CLR20r3问题
  • 原文地址:https://www.cnblogs.com/rhyswang/p/11392191.html
Copyright © 2020-2023  润新知