CSM-H-R: A Context Modeling Framework in Supporting Reasoning Automation for Interoperable Intelligent Systems and Privacy Protection
- URL: http://arxiv.org/abs/2308.11066v3
- Date: Fri, 5 Apr 2024 11:53:41 GMT
- Title: CSM-H-R: A Context Modeling Framework in Supporting Reasoning Automation for Interoperable Intelligent Systems and Privacy Protection
- Authors: Songhui Yue, Xiaoyan Hong, Randy K. Smith,
- Abstract summary: We propose a novel framework for automation of High Level Context (HLC) reasoning across intelligent systems at scale.
The design of the framework supports the sharing and inter context among intelligent systems and the components for handling CSMs and the management of hierarchy, relationship, and transition.
The implementation of the framework experiments on the HLC reasoning into vector and matrix computing and presents the potential to reach next level of automation.
- Score: 0.07499722271664144
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The automation of High-Level Context (HLC) reasoning across intelligent systems at scale is imperative because of the unceasing accumulation of contextual data, the trend of the fusion of data from multiple sources (e.g., sensors, intelligent systems), and the intrinsic complexity and dynamism of context-based decision-making processes. To mitigate the challenges posed by these issues, we propose a novel Hierarchical Ontology-State Modeling (HOSM) framework CSM-H-R, which programmatically combines ontologies and states at the modeling phase and runtime phase for attaining the ability to recognize meaningful HLC. It builds on the model of our prior work on the Context State Machine (CSM) engine by incorporating the H (Hierarchy) and R (Relationship and tRansition) dimensions to take care of the dynamic aspects of context. The design of the framework supports the sharing and interoperation of context among intelligent systems and the components for handling CSMs and the management of hierarchy, relationship, and transition. Case studies are developed for IntellElevator and IntellRestaurant, two intelligent applications in a smart campus setting. The prototype implementation of the framework experiments on translating the HLC reasoning into vector and matrix computing and presents the potential of using advanced probabilistic models to reach the next level of automation in integrating intelligent systems; meanwhile, privacy protection support is achieved in the application domain by anonymization through indexing and reducing information correlation. An implementation of the framework is available at https://github.com/songhui01/CSM-H-R.
Related papers
- Transforming the Hybrid Cloud for Emerging AI Workloads [81.15269563290326]
This white paper envisions transforming hybrid cloud systems to meet the growing complexity of AI workloads.
The proposed framework addresses critical challenges in energy efficiency, performance, and cost-effectiveness.
This joint initiative aims to establish hybrid clouds as secure, efficient, and sustainable platforms.
arXiv Detail & Related papers (2024-11-20T11:57:43Z) - Converging Paradigms: The Synergy of Symbolic and Connectionist AI in LLM-Empowered Autonomous Agents [55.63497537202751]
Article explores the convergence of connectionist and symbolic artificial intelligence (AI)
Traditionally, connectionist AI focuses on neural networks, while symbolic AI emphasizes symbolic representation and logic.
Recent advancements in large language models (LLMs) highlight the potential of connectionist architectures in handling human language as a form of symbols.
arXiv Detail & Related papers (2024-07-11T14:00:53Z) - Agent-driven Generative Semantic Communication with Cross-Modality and Prediction [57.335922373309074]
We propose a novel agent-driven generative semantic communication framework based on reinforcement learning.
In this work, we develop an agent-assisted semantic encoder with cross-modality capability, which can track the semantic changes, channel condition, to perform adaptive semantic extraction and sampling.
The effectiveness of the designed models has been verified using the UA-DETRAC dataset, demonstrating the performance gains of the overall A-GSC framework.
arXiv Detail & Related papers (2024-04-10T13:24:27Z) - A Data-to-Product Multimodal Conceptual Framework to Achieve Automated Software Evolution for Context-rich Intelligent Applications [0.0]
This study proposes a conceptual framework for achieving automated software evolution.
A Selective Sequential Scope Model (3S) model is developed based on the conceptual framework.
Although the study is about intelligent applications, the framework and analysis methods may be adapted for other types of software as AI brings more intelligence into their life cycles.
arXiv Detail & Related papers (2024-04-07T06:05:25Z) - Machine Learning Insides OptVerse AI Solver: Design Principles and
Applications [74.67495900436728]
We present a comprehensive study on the integration of machine learning (ML) techniques into Huawei Cloud's OptVerse AI solver.
We showcase our methods for generating complex SAT and MILP instances utilizing generative models that mirror multifaceted structures of real-world problem.
We detail the incorporation of state-of-the-art parameter tuning algorithms which markedly elevate solver performance.
arXiv Detail & Related papers (2024-01-11T15:02:15Z) - Interactive Autonomous Navigation with Internal State Inference and
Interactivity Estimation [58.21683603243387]
We propose three auxiliary tasks with relational-temporal reasoning and integrate them into the standard Deep Learning framework.
These auxiliary tasks provide additional supervision signals to infer the behavior patterns other interactive agents.
Our approach achieves robust and state-of-the-art performance in terms of standard evaluation metrics.
arXiv Detail & Related papers (2023-11-27T18:57:42Z) - Hierarchical Framework for Interpretable and Probabilistic Model-Based
Safe Reinforcement Learning [1.3678669691302048]
This paper proposes a novel approach for the use of deep reinforcement learning in safety-critical systems.
It combines the advantages of probabilistic modeling and reinforcement learning with the added benefits of interpretability.
arXiv Detail & Related papers (2023-10-28T20:30:57Z) - Proceedings of the Robust Artificial Intelligence System Assurance
(RAISA) Workshop 2022 [0.0]
The RAISA workshop will focus on research, development and application of robust artificial intelligence (AI) and machine learning (ML) systems.
Rather than studying robustness with respect to particular ML algorithms, our approach will be to explore robustness assurance at the system architecture level.
arXiv Detail & Related papers (2022-02-10T01:15:50Z) - Reconfigurable Intelligent Surface Assisted Mobile Edge Computing with
Heterogeneous Learning Tasks [53.1636151439562]
Mobile edge computing (MEC) provides a natural platform for AI applications.
We present an infrastructure to perform machine learning tasks at an MEC with the assistance of a reconfigurable intelligent surface (RIS)
Specifically, we minimize the learning error of all participating users by jointly optimizing transmit power of mobile users, beamforming vectors of the base station, and the phase-shift matrix of the RIS.
arXiv Detail & Related papers (2020-12-25T07:08:50Z) - AutonoML: Towards an Integrated Framework for Autonomous Machine
Learning [9.356870107137095]
Review seeks to motivate a more expansive perspective on what constitutes an automated/autonomous ML system.
In doing so, we survey developments in the following research areas.
We develop a conceptual framework throughout the review, augmented by each topic, to illustrate one possible way of fusing high-level mechanisms into an autonomous ML system.
arXiv Detail & Related papers (2020-12-23T11:01:10Z) - Integrating Deep Learning in Domain Sciences at Exascale [2.241545093375334]
We evaluate existing packages for their ability to run deep learning models and applications on large-scale HPC systems efficiently.
We propose new asynchronous parallelization and optimization techniques for current large-scale heterogeneous systems.
We present illustrations and potential solutions for enhancing traditional compute- and data-intensive applications with AI.
arXiv Detail & Related papers (2020-11-23T03:09:58Z)
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.