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Summer School - Data Science: Applied Text Mining, 2022, Utrecht University, Netherlands

Publish Date: May 01, 2022

Deadline: Jul 11, 2022

Event Dates: from Jul 25, 2022 12:00 to Jul 29, 2022 12:00

This course introduces the basic and advanced concepts and ideas in text mining and natural language processing. In this course, students will learn how to apply text mining methods on text data and analyse them in a pipeline with machine learning and deep learning algorithms. The course has a strongly practical hands-on focus, and students will gain experience in using text mining on real data from social sciences, humanities, and healthcare and interpreting the results.
Given the rapid rate at which text data are being digitally gathered in many domains of science, there is growing need for automated tools that can analyze, classify, and interpret this kind of data. Text mining techniques can be applied to create a structured representation of text, making its content more accessible for researchers. Applications of text mining are everywhere: social media, web search, advertising, emails, customer service, healthcare, marketing, etc. This course offers an extensive exploration into text mining with Python. The course has a strongly practical hands-on focus, and students will gain experience in using text mining on real data from for example social sciences and healthcare and interpreting the results. Through lectures and practicals, the students will learn the necessary skills to design, implement, and understand their own text mining pipeline. The topics in this course include preprocessing text, text classification, topic modeling, word embedding, deep learning models, and responsible text mining

The course deals with:

  • Review the fundamental approaches to text mining
  • Understand and apply current methods for analyzing texts
  • Define a text mining pipeline given a practical data science problem
  • Implement all steps in a text mining pipeline: feature extraction, feature selection, model learning, model evaluation
  • Understand and apply state-of-the-art methods in text mining
  • Implement word embedding and advanced deep learning techniques
  • The course starts with reviewing basic concepts of text mining and implementing advanced concepts in natural language processing. At the end of the week, participants will master advanced skills of text mining with Python.

Participants should have a basic knowledge and a motivation of scripting and programming in Python.
Participants are requested to bring their own laptop computer. Software will be available online.
This course is part of a series of 5 courses in the Summer School Data Science specialisation taught by UU’s department of Methodology & Statistics. Please see here for more information about the full specialisation. This course can also be taken separately.

Summer School Data Science specialisation:

  • Data science: Statistical Programming with R (S24)
  • Data science: Introduction to Text Mining with R (S41)
  • Data science: Multiple Imputation in Practice (S28)
  • Data science: Data analysis (S31)
  • Data science: Applied Text Mining (this course)

Upon completing 3 out of 5 courses in the specialisation (no more than one text mining course), students can obtain a certificate. Each course may also be taken separately.

Target audience
This course works best for learners who are comfortable programming in Python, want to acquire skills in text mining approaches, and have a basic knowledge of machine learning.
Participants should also have a basic knowledge and a motivation of scripting and programming in Python. Participants from a variety of fields, including sociology, psychology, education, human development, marketing, business, biology, medicine, political science, and communication sciences, will benefit from the course. A maximum of 80 participants will be allowed in this course. Please note that the selection for this course will be done on a first-come-first-served basis.
For an overview of all our summer school courses offered by the Department of Methodology and Statistics please click here.

Aim of the course
The course teaches students the basic and advanced text mining techniques using Python on a variety of applications in many domains of science. The skills addressed in this course are:

  • Python environment;
  • Preprocessing text and feature extraction;
  • NLTK, Gensim, spaCy;
  • Text classification;
  • Sentiment classification;
  • Text clustering;
  • Topic modeling;
  • Word embedding;
  • CBOW vs Skip-gram;
  • Convolutional neural networks;
  • Recurrent neural networks;
  • Attention models;
  • Responsible text mining;
  • Text summarisation.

For an overview of all our summer school courses offered by the Department of Methodology and Statistics please click here.

Study load
Five full days. A typical course day starts at 9.00 and ends at 17.00 with breaks for coffee, lunch and tea.

Course fee: €720
Included:

  • Fee covers
  • Course + course materials

Housing cost: €200

For more information click "LINK TO ORIGINAL" below.  

Further Official Information

Link to Original

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