202,255 research outputs found
AI management an exploratory survey of the influence of GDPR and FAT principles
As organisations increasingly adopt AI technologies, a number of ethical issues arise. Much research focuses on algorithmic bias, but there are other important concerns arising from the new uses of data and the introduction of technologies which may impact individuals. This paper examines the interplay between AI, Data Protection and FAT (Fairness, Accountability and Transparency) principles. We review the potential impact of the GDPR and consider the importance of the management of AI adoption. A survey of data protection experts is presented, the initial analysis of which provides some early insights into the praxis of AI in operational contexts. The findings indicate that organisations are not fully compliant with the GDPR, and that there is limited understanding of the relevance of FAT principles as AI is introduced. Those organisations which demonstrate greater GDPR compliance are likely to take a more cautious, risk-based approach to the introduction of AI
Visualizations for an Explainable Planning Agent
In this paper, we report on the visualization capabilities of an Explainable
AI Planning (XAIP) agent that can support human in the loop decision making.
Imposing transparency and explainability requirements on such agents is
especially important in order to establish trust and common ground with the
end-to-end automated planning system. Visualizing the agent's internal
decision-making processes is a crucial step towards achieving this. This may
include externalizing the "brain" of the agent -- starting from its sensory
inputs, to progressively higher order decisions made by it in order to drive
its planning components. We also show how the planner can bootstrap on the
latest techniques in explainable planning to cast plan visualization as a plan
explanation problem, and thus provide concise model-based visualization of its
plans. We demonstrate these functionalities in the context of the automated
planning components of a smart assistant in an instrumented meeting space.Comment: PREVIOUSLY Mr. Jones -- Towards a Proactive Smart Room Orchestrator
(appeared in AAAI 2017 Fall Symposium on Human-Agent Groups
Beneficial Artificial Intelligence Coordination by means of a Value Sensitive Design Approach
This paper argues that the Value Sensitive Design (VSD) methodology provides a principled approach to embedding common values in to AI systems both early and throughout the design process. To do so, it draws on an important case study: the evidence and final report of the UK Select Committee on Artificial Intelligence. This empirical investigation shows that the different and often disparate stakeholder groups that are implicated in AI design and use share some common values that can be used to further strengthen design coordination efforts. VSD is shown to be both able to distill these common values as well as provide a framework for stakeholder coordination
Ethically Aligned Design: An empirical evaluation of the RESOLVEDD-strategy in Software and Systems development context
Use of artificial intelligence (AI) in human contexts calls for ethical
considerations for the design and development of AI-based systems. However,
little knowledge currently exists on how to provide useful and tangible tools
that could help software developers and designers implement ethical
considerations into practice. In this paper, we empirically evaluate a method
that enables ethically aligned design in a decision-making process. Though this
method, titled the RESOLVEDD-strategy, originates from the field of business
ethics, it is being applied in other fields as well. We tested the
RESOLVEDD-strategy in a multiple case study of five student projects where the
use of ethical tools was given as one of the design requirements. A key finding
from the study indicates that simply the presence of an ethical tool has an
effect on ethical consideration, creating more responsibility even in instances
where the use of the tool is not intrinsically motivated.Comment: This is the author's version of the work. The copyright holder's
version can be found at https://doi.org/10.1109/SEAA.2019.0001
- …
