Academic competitions
- URL: http://arxiv.org/abs/2312.00268v1
- Date: Fri, 1 Dec 2023 01:01:04 GMT
- Title: Academic competitions
- Authors: Hugo Jair Escalante and Aleksandra Kruchinina
- Abstract summary: This chapter provides a survey of academic challenges in the context of machine learning and related fields.
We review the most influential competitions in the last few years and analyze challenges per area of knowledge.
The aims of scientific challenges, their goals, major achievements and expectations for the next few years are reviewed.
- Score: 61.592427413342975
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Academic challenges comprise effective means for (i) advancing the state of
the art, (ii) putting in the spotlight of a scientific community specific
topics and problems, as well as (iii) closing the gap for under represented
communities in terms of accessing and participating in the shaping of research
fields. Competitions can be traced back for centuries and their achievements
have had great influence in our modern world. Recently, they (re)gained
popularity, with the overwhelming amounts of data that is being generated in
different domains, as well as the need of pushing the barriers of existing
methods, and available tools to handle such data. This chapter provides a
survey of academic challenges in the context of machine learning and related
fields. We review the most influential competitions in the last few years and
analyze challenges per area of knowledge. The aims of scientific challenges,
their goals, major achievements and expectations for the next few years are
reviewed.
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