Skip to main content
Enterprise AI Analysis: AI, Help Me Think—but for Myself

AI-ASSISTED DECISION-MAKING ANALYSIS

AI, Help Me Think—but for Myself: Assisting People in Complex Decision-Making by Providing Different Kinds of Cognitive Support

Explore how AI tools can effectively support human decision-making by complementing users' reasoning processes. This analysis compares a recommendation-based AI (RecommendAI) with an alternative model (ExtendAI) that builds upon user rationales, offering different cognitive support and outcomes.

Executive Impact Overview

Initial findings highlight the distinct advantages of different AI assistance paradigms in complex decision-making scenarios, influencing decision ownership and outcome quality.

0 ExtendAI-influenced Decisions
0 RecommendAI-influenced Decisions
0 Improved Diversification (ExtendAI)
0 Participants Trusted ExtendAI

Deep Analysis & Enterprise Applications

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

RecommendAI Process
ExtendAI Process
Key Tensions
Paradigm Comparison

RecommendAI Decision-Making Flow

This illustrates the user's thought process when interacting with a recommendation-based AI. RecommendAI makes explicit suggestions for action, leading users to evaluate and then make a final decision.

makes suggestion for action
makes sense of AI's suggestions
makes final decision

Users reported that RecommendAI provided more novel insights and required less cognitive effort, helping them explore new directions in decision-making.

ExtendAI Decision-Making Flow

This illustrates the user's thought process when interacting with an AI that extends their own rationales. ExtendAI builds upon the user's initial plan, embedding feedback to help them reflect and refine their decisions.

makes plan for action
extends user's plan by embedding feedback
makes sense of plan containing AI's feedback
makes final decision

ExtendAI integrated better into the decision-making process, fostering deeper reflection and leading to a stronger sense of decision ownership, with slightly better outcomes in diversification.

Key Tensions in AI-Assisted Decision-Making

Our study revealed three critical tensions that highlight the nuanced design considerations for effective human-AI collaboration in complex tasks:

  • Actionability vs. Cognitive Engagement: Specific AI suggestions are easier to act on but can reduce user engagement; less specific guidance fosters deeper user reasoning.
  • New Insights vs. Consistency with User Reasoning: AI suggestions need to be novel to add value, yet must be consistent with the user's existing mental model for acceptance and integration.
  • Timeliness of AI Suggestions: AI input must be introduced at the 'right moment'—not too early (to avoid anchoring) nor too late (to ensure meaningful contribution to user reasoning).

Navigating these tensions is key to designing AI systems that truly complement human intelligence.

Comparison of AI Support Paradigms

Feature RecommendAI ExtendAI
Primary Support Type Direct recommendations Feedback on user's rationale
Cognitive Effort Lower Higher (initial input, deeper reflection)
Novel Insights High (novel directions) Moderate (reinforces/expands rationale)
Integration with User Reasoning Moderate (evaluate external suggestions) High (embedded feedback)
Decision Ownership Lower (can feel "given" a solution) Higher (built on user's thoughts)
Outcomes Good for inspiration Slightly better (e.g., diversification)
Perceived Helpfulness 71% of participants 81% of participants

The choice between these paradigms depends on the task complexity, user expertise, and desired level of human cognitive engagement.

81% ExtendAI Perceived as Helpful

Despite requiring more cognitive effort, a significant majority of participants found ExtendAI helpful, citing its ability to make them reflect more deeply on their decisions.

Estimate Your AI Integration ROI

Understand the potential impact of AI assistance on efficiency and cost savings for your enterprise decision-making processes.

Estimated Annual Savings $0
Hours Reclaimed Annually 0

Your AI Implementation Roadmap

A phased approach to integrating AI decision support tailored to your business needs, ensuring seamless adoption and measurable impact.

Phase 1: Discovery & Strategy

Conduct a deep dive into existing decision workflows, identify key challenges, and define AI integration objectives. This phase involves stakeholder interviews and initial data assessment.

Phase 2: Pilot Design & Prototyping

Based on insights, design and prototype an AI assistant (either RecommendAI or ExtendAI paradigm) for a specific use case. Iterative feedback loops with end-users are crucial to refine the interaction model.

Phase 3: Development & Integration

Full-scale development and seamless integration of the AI solution into your existing enterprise systems. Comprehensive training for users and administrators to maximize adoption and utility.

Phase 4: Optimization & Scaling

Monitor performance, collect continuous user feedback, and refine the AI's models and interaction patterns. Expand AI support to other relevant decision-making areas within the organization for broader impact.

Ready to Transform Your Decision-Making?

Whether you seek direct recommendations or enhanced reasoning support, our experts are here to guide your AI journey. Let's discuss a tailored strategy for your enterprise.

Ready to Get Started?

Book Your Free Consultation.

Let's Discuss Your AI Strategy!

Lets Discuss Your Needs


AI Consultation Booking