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Enterprise AI Analysis: Exploring semantic relationships and cross-disciplinary influences: case study of information systems and artificial intelligence

Enterprise AI Analysis

Exploring Semantic Relationships and Cross-Disciplinary Influences: Information Systems and Artificial Intelligence

This report presents a comprehensive analysis of the semantic relationships and cross-disciplinary influences between Artificial Intelligence (AI) and Information Systems (IS), drawing insights from a recent study. We quantify how these fields interact, revealing patterns of dependency and intellectual flow, particularly highlighting AI's significant impact on IS.

Key Executive Insights

Our analysis reveals critical patterns of influence and dependency between Artificial Intelligence (AI) and Information Systems (IS), offering strategic implications for enterprise AI adoption.

  • Asymmetric Influence: IS demonstrates a significantly higher reliance on AI concepts and methodologies (up to 20.68% of IS papers mention AI) compared to AI's minimal referencing of IS (as low as 1.63% in core subfields).
  • AI as a Driver: Breakthroughs in AI, such as in CNNs, RL, and GANs, largely originate and evolve within the core AI community, with negligible direct influence from IS research methods.
  • IS as an Adopter: IS integrates AI approaches to solve key research questions and drive innovations, functioning as a 'knowledge-consuming' field that operationalizes AI without reciprocally shaping its intellectual trajectory.
  • Strategic Opportunity: Understanding this unidirectional flow allows enterprises to strategically leverage established AI advancements within IS applications for digital transformation and intelligent systems.
0 IS Papers Referencing AI (WOS 2024)
0 AI Papers Referencing IS (WOS 2024)
0 Avg. Semantic Similarity (AI|IS, WOS)
0 AI-Related Pubs Growth in IS Journals

Deep Analysis & Enterprise Applications

Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.

Semantic Dependence by WOS Classification

17.21% of IS Papers Referencing AI (WOS, 2024)
1.63% of AI Papers Referencing IS (WOS, 2024)

Analysis classified by Web of Science categories reveals a significant semantic asymmetry. In 2024, 17.21% of IS papers referred to AI-centric work, while only 1.63% of AI papers mentioned IS. This indicates a strong one-way influence from AI to IS within WOS classifications, reinforcing AI's role as a foundational discipline for IS.

Semantic Dependence by Keyword Analysis

20.68% of IS Papers Mentioning AI (Scopus Keywords)
13.59% of AI Papers Mentioning IS (Scopus Keywords)

Keyword-based classification across Scopus and WOS databases shows consistent patterns. For Scopus, 20.68% of IS papers mention AI or ML, compared to 13.59% of AI papers referring to IS. This higher co-occurrence, especially in Scopus, suggests a broader integration of AI concepts within IS-centric research, yet still highlights a directional flow.

Intellectual Influence Through Citation Analysis

~15% of IS Papers Citing Influential AI Papers
~3% of AI Papers Citing Influential IS Papers

Examining citations to the top 10 highly influential papers in each field reveals a stark asymmetry. Approximately 12-15% of IS papers cite influential AI-related work, while only about 3% of AI-centric publications refer to top IS-centric papers. This quantitative evidence firmly establishes a unidirectional intellectual acknowledgment, where IS draws heavily from AI.

Convolutional Neural Networks (CNN) Impact

Enterprise Process Flow

Origin of CNN Idea (Human Visual Cortex)
Neocognitron Model (1980)
Gradient-Based Learning (1990s)
ImageNet Classification (2012)
Exponential Growth & Applications
Index All Years (NID CNN vs IS) Last 10 Years (NID CNN vs IS)
WOS 1.03 1.07
Scopus 1.04 1.1

CNN Development: An AI-Centric Trajectory

The analysis of Convolutional Neural Networks (CNN) reveals a development trajectory entirely within the core AI domain. Influential papers and journals driving CNN advancements, such as 'ImageNet Classification with Deep Convolutional Neural Networks,' show no inclination or influence from IS or research methods domains. NID values consistently above 1 indicate significant semantic dissimilarity between CNN and IS, reinforcing that CNN's progress has been independent of IS contributions.

Reinforcement Learning (RL) Impact

Enterprise Process Flow

Foundational Concepts (Optimal Control)
Deep Q-Learning Development
Human-Level Control (Mnih et al.)
Diverse AI/ML Applications
Continued Core AI Evolution
Index All Years (NID RL vs IS) Last 10 Years (NID RL vs IS)
WOS 1.11 1.15
Scopus 1.1 1.19

Reinforcement Learning: Autonomous AI Development

Reinforcement Learning (RL) research, including highly cited works like 'Human-level control through deep reinforcement learning,' is predominantly driven by core AI and Machine Learning experts. Productive and influential authors in RL consistently have research interests solely in AI/ML, with no reflected contribution or guidance from IS. NID values above 1 signify a substantial semantic distance, confirming RL's autonomous development trajectory distinct from IS.

Generative Adversarial Networks (GAN) Impact

Enterprise Process Flow

Original Publication (Goodfellow et al.)
Rapid Citation Growth (>40k)
Core AI Journal Adoption
Dominance by AI Authors/Concepts
Advanced Generative AI Applications
Index Last 10 Years (NID GAN vs IS)
WOS 1.17
Scopus 1.03

GAN Innovation: Pure AI Advancement

The groundbreaking work in Generative Adversarial Networks (GANs) by Goodfellow et al. (2014) has accumulated over 40,000 citations, with all citing journals and authors belonging exclusively to the core AI domain. This robust evidence, coupled with NID values indicating significant dissimilarity between GAN and IS, firmly establishes GAN development as an independent, AI-driven advancement with no discernible influence from Information Systems research.

Calculate Your Potential AI ROI

Estimate the significant efficiency gains and cost savings your enterprise could achieve by strategically integrating AI solutions informed by cross-disciplinary insights.

Estimated Annual Cost Savings $0
Estimated Annual Hours Reclaimed 0

Your AI Implementation Roadmap

Leveraging the insights from our analysis, we've outlined a phased approach to integrate AI solutions effectively into your enterprise, maximizing impact and minimizing disruption.

Phase 1: Strategic Assessment & Planning

Conduct a deep dive into your current IS infrastructure and business processes to identify prime AI integration points. Develop a tailored strategy aligned with your organizational goals and the specific AI dependencies identified.

Phase 2: Pilot Program Development

Implement targeted AI pilot projects, focusing on areas with high potential for immediate impact, such as data mining or decision support systems. Monitor performance and gather insights for iterative refinement.

Phase 3: Scalable AI Deployment

Expand successful pilot programs across the enterprise, ensuring robust integration with existing IS. Establish governance frameworks and best practices for ongoing AI solution management and maintenance.

Phase 4: Continuous Optimization & Innovation

Regularly evaluate AI solution performance, update models, and explore new AI advancements to maintain a competitive edge. Foster an AI-driven culture for sustained innovation within your information systems.

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