Connectionists: CFP: FIRE track on Information Retrieval from Microblogs during Disasters (IRMiDis)

Kripa Ghosh kripa.ghosh at gmail.com
Tue Jun 7 11:56:01 EDT 2022


*** Apologies for multiple posting ***

Information Retrieval from Microblogs during Disasters
(IRMiDis)https://sites.google.com/view/irmidis-fire2022/irmidis

Track in conjunction with the Annual Conference of the Forum for
Information Retrieval Evaluation (FIRE 2022 -
http://fire.irsi.res.in/fire/2022/home), December 9-13, 2022, Kolkata
(Hybrid Event)



The Information Retrieval from Microblogs during Disasters (IRMiDis)
track aims to develop datasets and methods for solving various
practical research problems associated with a disaster or pandemic
situation. The IRMiDis track has been run successfully with FIRE in
the years 2017, 2018 and 2021. This year IRMiDis will consist of two
important classification tasks over microblogs/tweets associated with
the COVID-19 pandemic.


*** Task 1: COVID-19 vaccine stance classification from tweets ***

It is important to understand the vaccine-stance of people in order to
nudge people towards intake of COVID vaccines. With this motivation,
this task aims to build an effective 3-class classifier on tweets with
respect to the stance reflected towards COVID-19 vaccines. The 3
classes are:
(1) AntiVax - the tweet indicates hesitancy (of the user who posted
the tweet) towards the use of vaccines.
(2) ProVax - the tweet supports / promotes the use of vaccines.
(3) Neutral - the tweet does not have any discernible sentiment
expressed towards vaccines or is not related to vaccines


*** Task 2: Detection of COVID-19 symptom-reporting in tweets ***

Quickly identifying people who are experiencing COVID-19 symptoms is
important for authorities to arrest the spread of the disease. In this
task, we explore if tweets that report about someone experiencing
COVID-19 symptoms (e.g., 'fever', 'cough') can be automatically
identified. The task is to build an 4-class classifier on tweets that
can detect tweets that report someone experiencing COVID-19 symptoms.
The 4 classes are:
(1) Primary Reporting - The user (who posted the tweet) is reporting
symptoms of himself/herself.
(2) Secondary Reporting - The user is reporting symptoms of some
friend / relative / neighbour / someone they met.
(3) Third-party Reporting - The user is reporting symptoms of some
celebrity / third-party person.
(4) Non-Reporting - The user is not reporting anyone experiencing
COVID-19 symptoms, but talking about symptom-words in some other
context or giving only general information about COVID-19 symptoms.


For both tasks, we will provide training data annotated by human
workers, and test data for evaluating the submitted models. Details of
how to participate are available at
https://sites.google.com/view/irmidis-fire2022/irmidis.


*** Timeline ***

June 6 -- open track website and training data release
July 15 -- test data release
August 1 -- run submission deadline
August 15 -- results declared
September 15 -- Working notes due
October 15 -- Camera ready copies of working notes and overview paper due


*** Organisers ***

Moumita Basu, Amity University Kolkata, India
Soham Poddar, Indian Institute of Technology Kharagpur, India
Saptarshi Ghosh, Indian Institute of Technology Kharagpur, India
Kripabandhu Ghosh, Indian Institute of Science Education and Research,
Kolkata, India


Kind Regards,

*Kripabandhu Ghosh*

Co-organizer

IRMiDis
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