• A
  • A
  • A
  • ABC
  • ABC
  • ABC
  • А
  • А
  • А
  • А
  • А
Regular version of the site
  • HSE University
  • Student Theses
  • Implementation of Machine Learning Methods in Rule-Based Platforms for Knowledge Extraction from Russian Medical Social Media

Implementation of Machine Learning Methods in Rule-Based Platforms for Knowledge Extraction from Russian Medical Social Media

Student: Mikhaylov Sergey

Supervisor: Irina Efimenko

Faculty: Faculty of Humanities

Educational Programme: Computational Linguistics (Master)

Year of Graduation: 2018

The aim of this research was to create a medical information extraction system combining machine learning approach and rule-based method for Russian medical social media data. This system was tested on the task of extracting complaints of Health@mail.ru (Здоровье@mail.ru) users about drug adverse events.

Student Theses at HSE must be completed in accordance with the University Rules and regulations specified by each educational programme.

Summaries of all theses must be published and made freely available on the HSE website.

The full text of a thesis can be published in open access on the HSE website only if the authoring student (copyright holder) agrees, or, if the thesis was written by a team of students, if all the co-authors (copyright holders) agree. After a thesis is published on the HSE website, it obtains the status of an online publication.

Student theses are objects of copyright and their use is subject to limitations in accordance with the Russian Federation’s law on intellectual property.

In the event that a thesis is quoted or otherwise used, reference to the author’s name and the source of quotation is required.

Search all student theses