Unsupervised Learning for Exploration and Classification of Health Data .


Unsupervised Learning for Exploration and Classification of Health Data
MP4 Video: AVC 1920×1080 Audio: AAC 48KHz 2ch Duration: 1 Hour 46M 4.79 GB
Genre: eLearning Language: English

One of the most exciting and practical goals of combining healthcare with technology is to mine large quantities of data to discover what, if anything, has eluded researchers-either through a lack of sufficiently large datasets or a lack of human ability to notice unlikely relationships. Unsupervised learning is a promising avenue for pursuing this goal, because unsupervised machine learning techniques do not require existing human knowledge to generate new insights about structure within datasets. This video, designed for learners with a basic understanding of statistics and computer programming, provides a detailed introduction to three specific types of unsupervised learning: cluster analysis, association analysis, and principal components analysis, as applied to health data sets both at the individual and population levels. Examples will be introduced in both Python and R.

Discover how unsupervised learning generates novel insights and metrics from healthcare data
Learn how to appropriately process healthcare data for unsupervised learning methodologies
Understand association analysis and how it applies to health data sets in business and research
Explore cluster analysis and how it's used in epidemiological and clinical applications
Learn about principal components analysis and its use in medical literature

Authors: O’Reilly

Date: 2016

Upload Date: 11/19/2017 4:32:44 AM

Format: MP4

Pages:

OCR:

Quality:

Language: English

ISBN / ASIN: 0000000000

ISBN13:

[ad_1]
[ARSocial_Lite_Locker id=1]
Please click here——->Free down
[/ARSocial_Lite_Locker]

[ad_2]

This website is authorized using the BY-NC-SA 4.0Authorization by agreement.