Mindful Active Learning
Zhila Esna Ashari, Hassan Ghasemzadeh

TL;DR
This paper introduces EMMA, a novel active learning framework for activity recognition that accounts for human cognitive and physical limitations, improving data annotation efficiency in wearable sensor applications.
Contribution
The work presents a new computational framework, EMMA, that incorporates human memory and capacity constraints into active learning for activity recognition, which is a novel approach.
Findings
EMMA improves activity recognition accuracy by an average of 13.5% over traditional methods.
The effectiveness of EMMA varies with memory strength, query budget, and task difficulty.
Mindful active learning benefits are most pronounced with limited queries and weak memory.
Abstract
We propose a novel active learning framework for activity recognition using wearable sensors. Our work is unique in that it takes physical and cognitive limitations of the oracle into account when selecting sensor data to be annotated by the oracle. Our approach is inspired by human-beings' limited capacity to respond to external stimulus such as responding to a prompt on their mobile devices. This capacity constraint is manifested not only in the number of queries that a person can respond to in a given time-frame but also in the lag between the time that a query is made and when it is responded to. We introduce the notion of mindful active learning and propose a computational framework, called EMMA, to maximize the active learning performance taking informativeness of sensor data, query budget, and human memory into account. We formulate this optimization problem, propose an approach…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems · IoT and Edge/Fog Computing · Mobile Crowdsensing and Crowdsourcing
