Class Central is learner-supported. When you buy through links on our site, we may earn an affiliate commission.

University of Michigan

Applied Text Mining in Python

University of Michigan via Coursera

Overview

Prepare for a new career with $100 off Coursera Plus
Gear up for jobs in high-demand fields: data analytics, digital marketing, and more.
This course will introduce the learner to text mining and text manipulation basics. The course begins with an understanding of how text is handled by python, the structure of text both to the machine and to humans, and an overview of the nltk framework for manipulating text. The second week focuses on common manipulation needs, including regular expressions (searching for text), cleaning text, and preparing text for use by machine learning processes. The third week will apply basic natural language processing methods to text, and demonstrate how text classification is accomplished. The final week will explore more advanced methods for detecting the topics in documents and grouping them by similarity (topic modelling).

This course should be taken after: Introduction to Data Science in Python, Applied Plotting, Charting & Data Representation in Python, and Applied Machine Learning in Python.

Syllabus

  • Module 1: Working with Text in Python
  • Module 2: Basic Natural Language Processing
  • Module 3: Classification of Text
  • Module 4: Topic Modeling

Taught by

Christopher Brooks, Kevyn Collins-Thompson, Daniel Romero and V. G. Vinod Vydiswaran

Reviews

2.0 rating, based on 2 Class Central reviews

4.2 rating at Coursera based on 3782 ratings

Start your review of Applied Text Mining in Python

  • Profile image for Raivis Joksts
    Raivis Joksts
    The topic is interesting, however as with the Machine Learning course from UM, this one suffers from too much theoretically focused graded assignments, and would benefit from more practical real life example tasks.
  • Will Wheeler
    This class is rife with errors. The main problem is the very finicky autograder, which is frequently programmed incorrectly and often gives no useful feedback. Other problems include readings in the first week that rely on modules from later weeks…

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.