Beyond Human-in-the-Loop: Empowering End-Users with Transparent Machine Learning
نویسنده
چکیده
Advances in data analytics and human computation are transforming how researchers conduct science in domains like bioinformatics, computational social science, and digital humanities. However, data analytics requires significant programming knowledge or access to technical experts, while human computation requires in-depth knowledge of crowd management and is error-prone due to lack of scientific domain expertise. The goal of this research is to empower a broader range of scientists and end-users to conduct data analytics by adopting the End-User Development (EUD) models commonly found in today’s commercial software platforms like Microsoft Excel, Wikipedia and WordPress. These EUD platforms enable people to focus on producing content rather than struggling with a development environment and new programming syntax or relying on disciplinary non-experts for essential technical help. This research explores a similar paradigm for scientists and end-users that can be thought of as End-User Data Analytics (EUDA), or Transparent Machine Learning (TML).
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