Javascript must be enabled to continue!
Potential History: Unlearning Imperialism, Ariella Aïsha Azoulay (2019)
View through CrossRef
Review of: Potential History: Unlearning Imperialism, Ariella Aïsha Azoulay (2019)
London and New York: Verso, 656 pp.,
ISBN 978-1-78873-571-1, p/bk, £30.00
Title: Potential History: Unlearning Imperialism, Ariella Aïsha Azoulay (2019)
Description:
Review of: Potential History: Unlearning Imperialism, Ariella Aïsha Azoulay (2019)
London and New York: Verso, 656 pp.
,
ISBN 978-1-78873-571-1, p/bk, £30.
00.
Related Results
Ariella Aïsha Azoulay, Potential History: Unlearning Imperialism (London: Verso, 2019), 656 pp, ISBN 9781788735711
Ariella Aïsha Azoulay, Potential History: Unlearning Imperialism (London: Verso, 2019), 656 pp, ISBN 9781788735711
Ariella Aïsha Azoulay, Potential History: Unlearning Imperialism (London: Verso, 2019), 656 pp, ISBN 9781788735711 Potential History: Unlearning Imperialism is a call to de-imperi...
UNLEARNING UNSUSTAINABILITY
UNLEARNING UNSUSTAINABILITY
There is an increased urge to facilitate a transformation of the Dutch food to address pressing sustainability challenges. At present, these calls for transformation are most often...
Unlearning in AI: Techniques and Frameworks for Data Deletion in Pretrained Models Under Legal and Ethical Constraints
Unlearning in AI: Techniques and Frameworks for Data Deletion in Pretrained Models Under Legal and Ethical Constraints
Abstract: The rapid expansion of the AI revolution has been propelled by a focus on large-scale pretrained models, which have enabled significant advancements across diverse tasks ...
Evaluation Metrics for Machine Unlearning
Evaluation Metrics for Machine Unlearning
The evaluation of machine unlearning has become increasingly significant as machine learning systems face growing demands for privacy, security, and regulatory compliance. This pap...
Intentional unlearning practices in postmassified university systems: Reformation for the metamodern era
Intentional unlearning practices in postmassified university systems: Reformation for the metamodern era
A crucial aspect of the learning cycle, unlearning has recently received more attention in academic discussions about the future of higher education. In an attempt to improve equal...
Exploring linkages between unlearning and human resource development: Revisiting unlearning cases
Exploring linkages between unlearning and human resource development: Revisiting unlearning cases
AbstractThe purpose of this study was to review unlearning cases and to identify and suggest what roles human resource development (HRD) can play in the unlearning process. By adop...
Meta-Learn to Unlearn: Enhanced Exact Machine Unlearning in Recommendation Systems with Meta-Learning
Meta-Learn to Unlearn: Enhanced Exact Machine Unlearning in Recommendation Systems with Meta-Learning
Recommendation systems are used widely to recommend items such as movies, products, or news to users. The performance of a recommendation model depends on the quality of the embedd...
Federated Unlearning in Financial Applications
Federated Unlearning in Financial Applications
Federated unlearning represents a sophisticated evolution in the domain of machine learning, particularly within federated learning frameworks. In financial applications, where dat...

