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Indonesian Actuarial Analytics Short Course

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Course Description

Statistical techniques can be used to address new situations. This is important in a rapidly evolving risk management world. Analysts with a strong analytical background understand that a large data set can represent a treasure trove of information to be mined and can yield a strong competitive advantage. This course provides budding analysts with a foundation in multiple reression. Participants will learn about these statistical techniques using data on the demand for insurance, lottery sales, healthcare expenditures, and other applications. Although no specific knowledge of actuarial or risk management is presumed, the approach introduces applications in which statistical techniques can be used to analyze real data of interest.
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  1. 1

    Chapter 1. Regression and the Normal Distribution

    Free

    Regression analysis is a statistical method that is widely used in many fields of study, with actuarial science being no exception. This chapter introduces the role of the normal distribution in regression and the use of logarithmic transformations in specifying regression relationships.

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    Course Introduction
    100 xp
    Fitting a normal distribution
    100 xp
    Fitting Galton's height data
    100 xp
    Visualizing child's height distribution
    100 xp
    Visualizing distributions
    100 xp
    Visualizing injury claims with density plots
    100 xp
    Summarizing distributions
    100 xp
    Summarizing injury claims with box and qq plots
    100 xp
    Effects on distributions of removing the largest claim
    100 xp
    Transformations
    100 xp
    Distribution of transformed bodily injury claims
    100 xp
  2. 2

    Chapter 2. Basic Linear Regression

    Free

    This chapter considers regression in the case of only one explanatory variable. Despite this seeming simplicity, many deep ideas of regression can be developed in this framework. By limiting ourselves to the one variable case, we can illustrate the relationships between two variables graphically. Graphical tools prove to be important for developing a link between the data and a predictive model.

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  3. 3

    Chapter 3. Multiple Linear Regression

    Free

    This chapter introduces linear regression in the case of several explanatory variables, known as multiple linear regression (MLR). Many basic linear regression concepts extend directly, including goodness of fit measures such as the coefficient of determination and inference using t-statistics. Multiple linear regression models provide a framework for summarizing highly complex, multivariate data. Because this framework requires only linearity in the parameters, we are able to fit models that are nonlinear functions of the explanatory variables, thus providing a wide scope of potential applications.

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  4. 4

    Chapter 4. Variable Selection

    Free

    This chapter describes tools and techniques to help you select variables to enter into a linear regression model, beginning with an iterative model selection process. In applications with many potential explanatory variables, automatic variable selection procedures are available that will help you quickly evaluate many models. Nonetheless, automatic procedures have serious limitations including the inability to account properly for nonlinearities such as the impact of unusual points; this chapter expands upon the Chapter 2 discussion of unusual points. It also describes collinearity, a common feature of regression data where explanatory variables are linearly related to one another. Other topics that impact variable selection, including out-of-sample validation, are also introduced.

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  5. 5

    Chapter 5. Interpreting Regression Results

    Free

    An application, determining an individual's characteristics that influence its health expenditures, illustrates the regression modeling process from start to finish. Subsequently, the chapter summarizes what we learn from the modeling process, underscoring the importance of variable selection.

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Edward W. (Jed) Frees HeadshotEdward W. (Jed) Frees

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