Fundamentals of Machine Learning
Date: No date given
Presenters: Doug Ashton
Level: Foundation
CPD: 6 hours
This is a one day course covering the fundamentals of machine learning and the methodology for applying them to real world analytics problems. The course outlines the stages involved in a machine learning analysis, and walks through how to perform them using the R programming language and the caret library. Participants will be provided with exercises to complete through the course so as to gain hands on experience in using the methods presented.
Learning Outcomes
Be familiar with the overall process of how to apply Machine Learning methods in an analysis project
Understand the differences and similarities between statistical modelling and machine learning theories
Have gained hands on experience in working with the caret package in R
Gain an intuitive understanding of how several specific machine learning methods solve the problems of prediction and classification
Topics Covered
Machine Learning
Classification and Prediction
Feature Engineering
Cross Validation
Hyper-parameter Tuning
Random Forests
Gradient Boosting
Support Vector Machines
Target Audience
Machine Learning can be applied to data in a whole range of fields from Finance to Pharmaceutical, Retail to Marketing, Sports to Travel and many, many more! This course is aimed at anyone interested in applying machine learning methods to their data in order to: gain deeper insight, make better decisions or build data products.
This course has now reached capacity. We are next running this course on 24th October 2017.
Venue: The Royal Statistical Society
City: London
Country: United Kingdom
Postcode: EC1Y 8LX
Organizer: Royal Statistical Society
Event types:
- Workshops and courses
Activity log