Applied Predictive Modeling: An Overview of Applied Predictive Modeling - E-book - ePub

Edition en anglais

Note moyenne 
 Steven Taylor - Applied Predictive Modeling: An Overview of Applied Predictive Modeling.
Predictive modeling uses statistics in order to predict outcomes. However, predictive modeling can be applied to future and to any other kind of unknown... Lire la suite
3,99 € E-book - ePub
Vous pouvez lire cet ebook sur les supports de lecture suivants :
Téléchargement immédiat
Dès validation de votre commande
Offrir maintenant
Ou planifier dans votre panier

Résumé

Predictive modeling uses statistics in order to predict outcomes. However, predictive modeling can be applied to future and to any other kind of unknown event, regardless of when it happened. When it comes to the applications of predictive modeling, techniques are used in various fields including algorithmic trading, uplift modeling, archaeology, health care, customer relationship management and many others.
This book covers the predictive modeling process with fundamental steps of the process, data preprocessing, data splitting and crucial steps of model tuning and improving model performance. Further, the book will introduce you to the most common classification and regression techniques including logistic regression which is widely used when it comes to the finding the probability of event success or event failure.
You will get to know the common predictive modeling techniques as well such as stepwise regression, polynomial regression and ridge regression which will help you when you are dealing with the data that suffers from very common multicollinearity where independent variables are highly correlated. The text then provides fundamental steps to effective predictive modeling. In the second chapter, you will learn how to build your own predictive model with logistic regression and Python.
You will find data sets as well as corresponding codes. On of the crucial predictive modeling steps is model tuning, so you will learn some common techniques used in order to improve your model performance. You will get to know how to tune the parameters commonly used to increase the overall predictive power. Predictive modeling comes with a few obstacles and challenges like class imbalance. Imbalanced classes commonly put the accuracy of the model out of business, but you will learn how to properly handle class imbalance which will significantly improve the accuracy of your model.
The book is multi-purpose focused on to predictive modeling process and predictive modeling techniques, so it will be of great help for those who are interested in predictive modeling techniques and applications. So, it is the right time to simplify the analysis, boost productivity as well as save time. The book will be your companion on your journey towards highly accurate predictive models. What you will learn in Applied Predictive Modeling: Most common predictive modeling techniques Types of regression models The overall predictive modeling process Fundamental steps to effective and highly accurate predictive modeling How to build predictive model with logistic regression with code listings How to build predictive model using Python How to enhance your model performance Parameters for increasing the overall predictive power How to handle class imbalance Common causes of poor model performance Get this book now and learn more about Applied Predictive Modeling!

Caractéristiques

  • Date de parution
    07/09/2019
  • Editeur
  • ISBN
    978-1-393-73701-8
  • EAN
    9781393737018
  • Format
    ePub
  • Caractéristiques du format ePub
    • Protection num.
      pas de protection

Avis libraires et clients

Avis audio

Écoutez ce qu'en disent nos libraires !

Souvent acheté ensemble

Vous aimerez aussi

Derniers produits consultés

Applied Predictive Modeling: An Overview of Applied Predictive Modeling est également présent dans les rayons

3,99 €