メインコンテンツへスキップ
ホームR

コース

Nonlinear Modeling with Generalized Additive Models (GAMs) in R

中級スキルレベル
更新日 2024/09
GAMs model relationships in data as nonlinear functions that are highly adaptable to different types of data science problems.
コースを無料で開始
RProbability & Statistics4時間15 ビデオ50 演習4,050 XP9,055達成証明書

無料アカウントを作成

または

続行すると、弊社の利用規約プライバシーポリシーに同意し、データが米国に保存されることに同意したことになります。

数千の企業の学習者に愛されています

Group

2名以上のトレーニングをお考えですか?

DataCamp for Businessを試す

コース説明

Generalized Additive Models are a powerful tool for both prediction and inference. More flexible than linear models, and more understandable than black-box methods, GAMs model relationships in data as nonlinear functions that are highly adaptable to different types of data and data science problems. In this course, you'll learn how GAMs work and how to construct them with the popular mgcv package. You'll learn how to interpret, explain and visualize your model results, and how to diagnose and fix model problems. You'll work with data sets that will show you how to apply GAMs to a variety of situations: automobile performance data for building mixed linear and nonlinear models, soil pollution data for building geospatial models, and consumer purchasing data for classification and prediction. By the end of this course, you'll have a toolbox for solving many data science problems.

前提条件

Introduction to Regression in R
1

Introduction to Generalized Additive Models

In this chapter, you will learn how Generalized additive models work and how to use flexible, nonlinear functions to model data without over-fitting. You will learn to use the gam() function in the mgcv package, and how to build multivariate models that mix nonlinear, linear, and categorical effects to data.
チャプター開始
2

Interpreting and Visualizing GAMs

In this chapter, you will take a closer look at the models you fit in chapter 1 and learn how to interpret and explain them. You will learn how to make plots that show how different variables affect model outcomes. Then you will diagnose problems in models arising from under-fitting the data or hidden relationships between variables, and how to iteratively fix those problems and get better results.
チャプター開始
3

Spatial GAMs and Interactions

In this chapter, you will extend the types of models you can fit to those with interactions of multiple variables. You will fit models of geospatial data by using these interactions to model complex surfaces, and visualize those surfaces in 3D. Then you will learn about interactions between smooth and categorical variables, and how to model interactions between very different variables like space and time.
チャプター開始
4

Logistic GAMs for Classification

In the first three chapters, you used GAMs for regression of continuous outcomes. In this chapter, you will use GAMs for classification. You will build logistic GAMs to predict binary outcomes like customer purchasing behavior, learn to visualize this new type of model, make predictions, and learn how to explain the variables that influence each prediction.
チャプター開始
Nonlinear Modeling with Generalized Additive Models (GAMs) in R
コース完了

修了証明書を取得

この資格をLinkedInプロフィール、履歴書、CVに追加しましょう
ソーシャルメディアや人事評価で共有しましょう
今すぐ登録

19百万人を超える学習者と一緒にNonlinear Modeling with Generalized Additive Models (GAMs) in Rを今日から始めましょう!

無料アカウントを作成

または

続行すると、弊社の利用規約プライバシーポリシーに同意し、データが米国に保存されることに同意したことになります。

DataCamp for Mobileでデータスキルを磨きましょう

モバイル コースと毎日の 5 分間のコーディング チャレンジで、外出先でも進歩できます。