XAIport: A Service Framework for the Early Adoption of XAI in AI Model Development
- URL: http://arxiv.org/abs/2403.16858v1
- Date: Mon, 25 Mar 2024 15:22:06 GMT
- Title: XAIport: A Service Framework for the Early Adoption of XAI in AI Model Development
- Authors: Zerui Wang, Yan Liu, Abishek Arumugam Thiruselvi, Abdelwahab Hamou-Lhadj,
- Abstract summary: We propose the early adoption of Explainable AI (XAI) with a focus on three properties: Quality of explanation, the explanation summaries should be consistent across multiple XAI methods.
We present XAIport, a framework of XAI encapsulated into Open APIs to deliver early explanations as observation for learning model quality assurance.
- Score: 7.196813936746303
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this study, we propose the early adoption of Explainable AI (XAI) with a focus on three properties: Quality of explanation, the explanation summaries should be consistent across multiple XAI methods; Architectural Compatibility, for effective integration in XAI, the architecture styles of both the XAI methods and the models to be explained must be compatible with the framework; Configurable operations, XAI explanations are operable, akin to machine learning operations. Thus, an explanation for AI models should be reproducible and tractable to be trustworthy. We present XAIport, a framework of XAI microservices encapsulated into Open APIs to deliver early explanations as observation for learning model quality assurance. XAIport enables configurable XAI operations along with machine learning development. We quantify the operational costs of incorporating XAI with three cloud computer vision services on Microsoft Azure Cognitive Services, Google Cloud Vertex AI, and Amazon Rekognition. Our findings show comparable operational costs between XAI and traditional machine learning, with XAIport significantly improving both cloud AI model performance and explanation stability.
Related papers
- An Open API Architecture to Discover the Trustworthy Explanation of Cloud AI Services [11.170826645382661]
This article presents the design of an open-API-based explainable AI (XAI) service to provide feature contribution explanations for cloud AI services.
We argue that XAI operations are accessible as open APIs to enable the consolidation of the XAI operations into the cloud AI services assessment.
arXiv Detail & Related papers (2024-11-05T16:52:22Z) - XEdgeAI: A Human-centered Industrial Inspection Framework with Data-centric Explainable Edge AI Approach [2.0209172586699173]
This paper introduces a novel XAI-integrated Visual Quality Inspection framework.
Our framework incorporates XAI and the Large Vision Language Model to deliver human-centered interpretability.
This approach paves the way for the broader adoption of reliable and interpretable AI tools in critical industrial applications.
arXiv Detail & Related papers (2024-07-16T14:30:24Z) - Usable XAI: 10 Strategies Towards Exploiting Explainability in the LLM Era [77.174117675196]
XAI is being extended towards Large Language Models (LLMs)
This paper analyzes how XAI can benefit LLMs and AI systems.
We introduce 10 strategies, introducing the key techniques for each and discussing their associated challenges.
arXiv Detail & Related papers (2024-03-13T20:25:27Z) - Cloud-based XAI Services for Assessing Open Repository Models Under Adversarial Attacks [7.500941533148728]
We propose a cloud-based service framework that encapsulates computing components and assessment tasks into pipelines.
We demonstrate the application of XAI services for assessing five quality attributes of AI models.
arXiv Detail & Related papers (2024-01-22T00:37:01Z) - Extracting human interpretable structure-property relationships in
chemistry using XAI and large language models [0.4769602527256662]
We propose the XpertAI framework that integrates XAI methods with large language models (LLMs) accessing scientific literature to generate natural language explanations of raw chemical data automatically.
Our results show that XpertAI combines the strengths of LLMs and XAI tools in generating specific, scientific, and interpretable explanations.
arXiv Detail & Related papers (2023-11-07T15:02:32Z) - Strategies to exploit XAI to improve classification systems [0.0]
XAI aims to provide insights into the decision-making process of AI models, allowing users to understand their results beyond their decisions.
Most XAI literature focuses on how to explain an AI system, while less attention has been given to how XAI methods can be exploited to improve an AI system.
arXiv Detail & Related papers (2023-06-09T10:38:26Z) - Optimizing Explanations by Network Canonization and Hyperparameter
Search [74.76732413972005]
Rule-based and modified backpropagation XAI approaches often face challenges when being applied to modern model architectures.
Model canonization is the process of re-structuring the model to disregard problematic components without changing the underlying function.
In this work, we propose canonizations for currently relevant model blocks applicable to popular deep neural network architectures.
arXiv Detail & Related papers (2022-11-30T17:17:55Z) - Seamful XAI: Operationalizing Seamful Design in Explainable AI [59.89011292395202]
Mistakes in AI systems are inevitable, arising from both technical limitations and sociotechnical gaps.
We propose that seamful design can foster AI explainability by revealing sociotechnical and infrastructural mismatches.
We explore this process with 43 AI practitioners and real end-users.
arXiv Detail & Related papers (2022-11-12T21:54:05Z) - Connecting Algorithmic Research and Usage Contexts: A Perspective of
Contextualized Evaluation for Explainable AI [65.44737844681256]
A lack of consensus on how to evaluate explainable AI (XAI) hinders the advancement of the field.
We argue that one way to close the gap is to develop evaluation methods that account for different user requirements.
arXiv Detail & Related papers (2022-06-22T05:17:33Z) - Edge-Cloud Polarization and Collaboration: A Comprehensive Survey [61.05059817550049]
We conduct a systematic review for both cloud and edge AI.
We are the first to set up the collaborative learning mechanism for cloud and edge modeling.
We discuss potentials and practical experiences of some on-going advanced edge AI topics.
arXiv Detail & Related papers (2021-11-11T05:58:23Z) - A User-Centred Framework for Explainable Artificial Intelligence in
Human-Robot Interaction [70.11080854486953]
We propose a user-centred framework for XAI that focuses on its social-interactive aspect.
The framework aims to provide a structure for interactive XAI solutions thought for non-expert users.
arXiv Detail & Related papers (2021-09-27T09:56:23Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.