Problem Learning: Towards the Free Will of Machines
Yongfeng Zhang

TL;DR
This paper introduces Problem Learning, a novel approach enabling machines to autonomously discover and define valid, ethical problems from data, aiming to enhance machine autonomy and inspire new research directions.
Contribution
It formalizes the concept of problem learning, proposing approaches for machines to identify and define problems independently, advancing towards machine free will in problem formulation.
Findings
Formalization of problem learning as identifying valid and ethical problems
Proposed approaches for autonomous problem discovery
Discussion on ethical implications and responsible AI
Abstract
A machine intelligence pipeline usually consists of six components: problem, representation, model, loss, optimizer and metric. Researchers have worked hard trying to automate many components of the pipeline. However, one key component of the pipeline--problem definition--is still left mostly unexplored in terms of automation. Usually, it requires extensive efforts from domain experts to identify, define and formulate important problems in an area. However, automatically discovering research or application problems for an area is beneficial since it helps to identify valid and potentially important problems hidden in data that are unknown to domain experts, expand the scope of tasks that we can do in an area, and even inspire completely new findings. This paper describes Problem Learning, which aims at learning to discover and define valid and ethical problems from data or from the…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Machine Learning and Data Classification · Ethics and Social Impacts of AI
