Linear regression is one of the most widely used statistical methods available today. It is used by data analysts and students in almost every discipline. However, for the standard ordinary least squares method, there are several strong assumptions made about data that is often not true in real world data sets. This can cause numerous problems in the least squares model. One of the most common issues is a model overfitting the data. Ridge Regression and LASSO are two methods used to create a better and more accurate model. I will discuss how overfitting arises in least squares models and the reasoning for using Ridge Regression and LASSO include analysis of real world example data and compare these methods with OLS and each other to further infer the benefits and drawbacks of each method.
Discussing whether an Autonomous Car should be bounded by the 3 Laws of Robotics by comparing their definitions. This is the first research paper I have ever written so the references would be a lackluster.
This is a modified version of my-latex-cv by Primož Godec. The changes include:
A Summary / Objective section
Keywords for software stack used at jobs
Thesis for educational degrees
Removed Date of Birth to include a personal website
Other Skills section replaced by the Other Projects section
Shortened the space between sections
Shortened the page margins to 1 cm
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