Back to Machine Learning: Classification
University of Washington

Machine Learning: Classification

Case Studies: Analyzing Sentiment & Loan Default Prediction In our case study on analyzing sentiment, you will create models that predict a class (positive/negative sentiment) from input features (text of the reviews, user profile information,...). In our second case study for this course, loan default prediction, you will tackle financial data, and predict when a loan is likely to be risky or safe for the bank. These tasks are an examples of classification, one of the most widely used areas of machine learning, with a broad array of applications, including ad targeting, spam detection, medical diagnosis and image classification. In this course, you will create classifiers that provide state-of-the-art performance on a variety of tasks. You will become familiar with the most successful techniques, which are most widely used in practice, including logistic regression, decision trees and boosting. In addition, you will be able to design and implement the underlying algorithms that can learn these models at scale, using stochastic gradient ascent. You will implement these technique on real-world, large-scale machine learning tasks. You will also address significant tasks you will face in real-world applications of ML, including handling missing data and measuring precision and recall to evaluate a classifier. This course is hands-on, action-packed, and full of visualizations and illustrations of how these techniques will behave on real data. We've also included optional content in every module, covering advanced topics for those who want to go even deeper! Learning Objectives: By the end of this course, you will be able to: -Describe the input and output of a classification model. -Tackle both binary and multiclass classification problems. -Implement a logistic regression model for large-scale classification. -Create a non-linear model using decision trees. -Improve the performance of any model using boosting. -Scale your methods with stochastic gradient ascent. -Describe the underlying decision boundaries. -Build a classification model to predict sentiment in a product review dataset. -Analyze financial data to predict loan defaults. -Use techniques for handling missing data. -Evaluate your models using precision-recall metrics. -Implement these techniques in Python (or in the language of your choice, though Python is highly recommended).

Status: Natural Language Processing
Status: Big Data
Course21 hours

Featured reviews

AN

4.0Reviewed Feb 22, 2018

Great knowledge about machine learning fundamentals, More math illustration needed though it's great knowledge and very great basics about different machine learning algorithm used in reality

KL

5.0Reviewed Jun 23, 2017

Great course. I learned a lot about Classification theories as well as practical issues. The assignments are very informative providing complimentary understanding to the lectures.

IF

5.0Reviewed Jul 17, 2017

Good overview of classification. The python was easier in this section than previous sections (although maybe I'm just better at it by this point.) The topics were still as informative though!

SN

5.0Reviewed Jun 11, 2019

The way Carlos Guestrin explains things is exquisite. if basics is what is very important to you, and can learn code implementation and libraries from other sources, this is the go to course

EM

4.0Reviewed Apr 14, 2017

Extremely clear and informative. Good introduction to ML. I felt the labs could have had us write a little more of our own code, and would have been better to use non-proprietary libraries.

TE

5.0Reviewed May 11, 2016

A bit easy to get through the exercises bur otherwise a very enlightening and inspiring course. - This is btw a positive review if anybody should be in doubt after taking this course :)

SS

5.0Reviewed Oct 15, 2016

Hats off to the team who put the course together! Prof Guestrin is a great teacher. The course gave me in-depth knowledge regarding classification and the math and intuition behind it. It was fun!

JC

5.0Reviewed Mar 28, 2016

This continues UWash's outstanding Machine Learning series of classes, and is equally as impressive, if not moreso, then the Regression class it follows. I'm super-excited for the next class!

CJ

5.0Reviewed Jan 24, 2017

Very impressive course, I would recommend taking course 1 and 2 in this specialization first since they skip over some things in this course that they have explained thoroughly in those courses

ML

5.0Reviewed Mar 13, 2016

Great course!Personally I could use a little more on the math behind the algorithms (e.g. Adaboost, why does it work?).Also, would be great to add SVM in next iterations of this class.Thanks!

MP

5.0Reviewed Aug 22, 2017

The course starts slow, but it gets more interesting from week 2. The assignments are more challenging than in Regression, but I have really enjoyed it. I highly recommend it!

RB

5.0Reviewed Oct 19, 2020

This class was very interesting. I learned a lot. I really enjoyed the way the instructor presented the information. The programming assignments were challenging learning opportunities.

All reviews

Showing: 20 of 589

Alex Henry
1.0
Reviewed Feb 7, 2018
Lewis C. Levin
2.0
Reviewed Jun 13, 2019
Saqib Nizam Shamsi
5.0
Reviewed Oct 16, 2016
Ian Ferre
5.0
Reviewed Jul 17, 2017
RAJ VISHWASRAO
5.0
Reviewed Oct 2, 2019
Christian Johansson
5.0
Reviewed Jan 25, 2017
Jason Michael Cherry
5.0
Reviewed Mar 29, 2016
Feng Guo
4.0
Reviewed Jul 12, 2018
Saransh Agarwal
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Reviewed Oct 31, 2016
Sauvage Frank
5.0
Reviewed Mar 29, 2016
uma maheswara rao meleti
4.0
Reviewed Aug 4, 2018
Dilip Krishna
4.0
Reviewed Dec 21, 2016
Daisuke Hashimoto
5.0
Reviewed May 18, 2016
Ridhwanul Haque
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Reviewed Oct 16, 2017
Gerard Alexander
5.0
Reviewed May 18, 2020
Apurva Agrawal
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Reviewed Jun 14, 2016
Edward Foster
5.0
Reviewed Jun 25, 2017
Benoit Passot
5.0
Reviewed Dec 29, 2016
Liang-Yao Wang
5.0
Reviewed Aug 11, 2017
Paul Curry
5.0
Reviewed Aug 13, 2016