Logo

    dynamicalsystems

    Explore "dynamicalsystems" with insightful episodes like "LM101-084: Ch6: How to Analyze the Behavior of Smart Dynamical Systems" and "LM101-081: Ch3: How to Define Machine Learning (or at Least Try)" from podcasts like ""Learning Machines 101" and "Learning Machines 101"" and more!

    Episodes (2)

    LM101-084: Ch6: How to Analyze the Behavior of Smart Dynamical Systems

    LM101-084: Ch6: How to Analyze the Behavior of Smart Dynamical Systems

    In this episode of Learning Machines 101, we review Chapter 6 of my book “Statistical Machine Learning” which introduces methods for analyzing the behavior of machine inference algorithms and machine learning algorithms as dynamical systems. We show that when dynamical systems can be viewed as special types of optimization algorithms, the behavior of those systems even when they are highly nonlinear and high-dimensional can be analyzed. Learn more by visiting: www.learningmachines101.com and www.statisticalmachinelearning.com .

    LM101-081: Ch3: How to Define Machine Learning (or at Least Try)

    LM101-081: Ch3: How to Define Machine Learning (or at Least Try)

    This particular podcast covers the material in Chapter 3 of my new book “Statistical Machine Learning: A unified framework” with expected publication date May 2020. In this episode we discuss Chapter 3 of my new book which discusses how to formally define machine learning algorithms. Briefly, a learning machine is viewed as a dynamical system that is minimizing an objective function. In addition, the knowledge structure of the learning machine is interpreted as a preference relation graph which is implicitly specified by the objective function. In addition, this week we include in our book review section a new book titled “The Practioner’s Guide to Graph Data  by Denise Gosnell and Matthias Broecheler. To find out more information visit the website: www.learningmachines101.com .

    Logo

    © 2024 Podcastworld. All rights reserved

    Stay up to date

    For any inquiries, please email us at hello@podcastworld.io