Summary information

Study title

Developing a rule-based method for identifying researchers on Twitter: The case of vaccine discussions

Creator

Ekström, Björn

Study number / PID

snd1117-1-1.0 (SND)

FO2017/23 (hb.se)

https://doi.org/10.5878/akmc-va16 (DOI)

Data access

Open

Series

Not available

Abstract

This study seeks to develop a method for identifying the occurrences and proportions of researchers, media and other professionals active in Twitter discussions. As a case example, an anonymised dataset from Twitter vaccine discussions is used. The study proposes a method of using keywords as strings within lists to identify classes from user biographies. This provides a way to apply multiple classification principles to a set of Twitter biographies using semantic rules through the Python programming language. The script used for the study is here deposited. Method development for Twitter biography classification concerning occurrences of academics, academically related groups and individuals, media, other groups and members of the general public. Written in the Python programming language.

Methodology

Data collection period

Not available

Country

Time dimension

Other

Analysis unit

Group
Individual
Organization/Institution
Other

Universe

Twitter users

Sampling procedure

Other

Kind of data

Not available

Data collection mode

Not available

Funding information

Funder

Horizon 2020

Grant number

770531

Access

Publisher

Swedish National Data Service

Publication year

2019

Terms of data access

Access to data through SND. Data are freely accessible.

Related publications

Not available