AIApr 3, 2024

Learning Alternative Ways of Performing a Task

arXiv:2404.02579v14 citationsh-index: 41Expert syst appl
Originality Incremental advance
AI Analysis

This addresses the challenge of learning from limited expert data in domains like activity recognition, though it appears incremental as it builds on process mining with a novel method for handling few examples.

The paper tackles the problem of learning multiple alternative strategies for performing a task from very few expert examples, which traditional machine learning struggles with due to data scarcity. It introduces an inductive approach that learns patterns capturing different styles, showing on surgical and cooking tasks that a small set of examples yields models representing diverse strategies effectively.

A common way of learning to perform a task is to observe how it is carried out by experts. However, it is well known that for most tasks there is no unique way to perform them. This is especially noticeable the more complex the task is because factors such as the skill or the know-how of the expert may well affect the way she solves the task. In addition, learning from experts also suffers of having a small set of training examples generally coming from several experts (since experts are usually a limited and expensive resource), being all of them positive examples (i.e. examples that represent successful executions of the task). Traditional machine learning techniques are not useful in such scenarios, as they require extensive training data. Starting from very few executions of the task presented as activity sequences, we introduce a novel inductive approach for learning multiple models, with each one representing an alternative strategy of performing a task. By an iterative process based on generalisation and specialisation, we learn the underlying patterns that capture the different styles of performing a task exhibited by the examples. We illustrate our approach on two common activity recognition tasks: a surgical skills training task and a cooking domain. We evaluate the inferred models with respect to two metrics that measure how well the models represent the examples and capture the different forms of executing a task showed by the examples. We compare our results with the traditional process mining approach and show that a small set of meaningful examples is enough to obtain patterns that capture the different strategies that are followed to solve the tasks.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes