Targeted Therapy in Data Removal: Object Unlearning Based on Scene Graphs
Chenhan Zhang, Benjamin Zi Hao Zhao, Hassan Asghar, Dali Kaafar

TL;DR
This paper introduces a scene graph-based object unlearning framework that enables precise removal of specific objects from images, addressing privacy concerns while maintaining overall image quality and semantic integrity.
Contribution
It proposes a novel scene graph-based approach for object unlearning that is more granular than traditional sample or feature unlearning methods.
Findings
Improved fidelity in unlearned object removal from images.
Preservation of overall image semantics after unlearning.
Effective handling of privacy requests with minimal utility loss.
Abstract
Users may inadvertently upload personally identifiable information (PII) to Machine Learning as a Service (MLaaS) providers. When users no longer want their PII on these services, regulations like GDPR and COPPA mandate a right to forget for these users. As such, these services seek efficient methods to remove the influence of specific data points. Thus the introduction of machine unlearning. Traditionally, unlearning is performed with the removal of entire data samples (sample unlearning) or whole features across the dataset (feature unlearning). However, these approaches are not equipped to handle the more granular and challenging task of unlearning specific objects within a sample. To address this gap, we propose a scene graph-based object unlearning framework. This framework utilizes scene graphs, rich in semantic representation, transparently translate unlearning requests into…
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Taxonomy
TopicsMachine Learning in Healthcare · Machine Learning and Data Classification · Brain Tumor Detection and Classification
