Lecture

Fractional factorial design: Basics and Applications

In course
DEMO: enim culpa minim
Cillum magna tempor reprehenderit excepteur labore est velit veniam. Mollit aliquip duis deserunt ex aliquip nisi reprehenderit dolor qui mollit mollit enim veniam. Do voluptate tempor sunt eu tempor dolor qui cillum nulla.
Login to see this section
Description

This lecture covers the fundamentals of fractional factorial design, including the group structure of factorial columns, blocking alias, interaction effects, learning outcomes, and the comparison between full factorial and fractional designs. It also delves into the geometrical interpretation of the 2(4-1) design and the aliases of the 24-1 design, showcasing the importance of selecting, using, and analyzing fractional factorial designs to optimize experimental outcomes.

Instructor
tempor id eu qui
Amet non cillum ad labore excepteur excepteur qui veniam ipsum id consectetur ad. Aliqua sit sint cillum duis esse amet in exercitation labore in mollit adipisicing sunt velit. In occaecat minim velit ea excepteur duis deserunt.
Login to see this section
About this result
This page is automatically generated and may contain information that is not correct, complete, up-to-date, or relevant to your search query. The same applies to every other page on this website. Please make sure to verify the information with EPFL's official sources.
Related lectures (35)
Fractional Factorial Designs: Understanding Interactions
Covers fractional factorial designs to efficiently study interactions in experiments, focusing on aliasing, geometric interpretation, and effect selection.
Mixing Plans: Constraints and Models
Explores mixing plans, constraints, and models in Design of Experiments, emphasizing the importance of degrees of freedom.
Qualitative factors II
Explores qualitative factors in experimental design, factorial strategies, model computation, and practical exercises in Matlab.
Design of Experiments: Efficiency and Interactions
Introduces the Design of Experiments, emphasizing efficiency and interactions in R&D through historical context and practical examples.
Design of Experiments: Statistical Design and Analysis
Covers statistical design of experiments, focusing on minimizing costs and maximizing accuracy.
Show more