toplogo
サインイン
インサイト - Information Systems - # Human-AI Collaboration in Task Management

GOLF: Goal-Oriented Long-term Life Tasks Supported by Human-AI Collaboration


核心概念
LLMs can enhance human decision-making and task management through the GOLF framework, focusing on long-term life tasks.
要約

The content discusses the GOLF framework, emphasizing how Large Language Models (LLMs) like ChatGPT can revolutionize human-AI collaboration. It introduces a new paradigm for task-oriented information seeking, likening it to playing golf. By focusing on strategic prompts and prioritizing end goals, LLM-based systems reduce cognitive burden and offer more efficient information retrieval. The study proposes the GOLF framework to support significant life decisions through goal orientation and long-term planning. It outlines a comprehensive simulation study to test the framework's efficacy and experiments with different models and settings. The methodology includes task hierarchies in Information Seeking and Retrieval (ISR), recent progress in task support research, LLM agent capabilities in task automation, research questions about AI agents supporting long-term human tasks, proposed methodology for implementing the GOLF framework, simulation studies to test interaction processes, evaluation methods involving LLM evaluators and human assessors, model experiments using different AI architectures, deployment considerations for real-world applications, specific research issues for discussion regarding user studies and ethical implications.

Motivation:

  • ChatGPT has transformed human-AI interaction.
  • Leveraging LLMs reduces cognitive load.
  • Paradigm shift in information access.

Related Work:

  • Tasks range from everyday queries to professional needs.
  • Information Search Process stages.
  • Task hierarchies in ISR.
  • Recent focus on user-task interactions.

Research Questions:

  1. Framework of AI agents supporting long-term tasks?
  2. Users' needs in completing long-term tasks with AI agents?
  3. Deployment & evaluation of LLM systems for long-term tasks?

Proposed Methodology:

  • Introduction of the GOLF framework.
  • Simulation study using Autogen tool.
  • Evaluation through LLM evaluators & human assessors.
  • Model experiment & deployment with different AI architectures.

Specific Research Issues for Discussion:

  • Challenges in simulating real-life conditions.
  • Designing user studies within doctoral research constraints.
  • Impact of conversational AI on user interactions.
  • Ethical considerations & privacy implications in evaluating AI tools.
edit_icon

要約をカスタマイズ

edit_icon

AI でリライト

edit_icon

引用を生成

translate_icon

原文を翻訳

visual_icon

マインドマップを作成

visit_icon

原文を表示

統計
None
引用
"LLMs become capable of executing routine tasks with minimal human input." "The GOLF framework aims to explore and enhance LLMs’ abilities to support significant life decisions."

抽出されたキーインサイト

by Ben Wang 場所 arxiv.org 03-27-2024

https://arxiv.org/pdf/2403.17089.pdf
GOLF

深掘り質問

How can simulations effectively reflect real-life conditions for testing frameworks like GOLF?

Simulations can effectively reflect real-life conditions by incorporating a diverse range of factors that mimic the complexities of human interactions and decision-making processes. To simulate real-life conditions for testing frameworks like GOLF, various strategies can be employed: User Diversity: Introduce simulated users with different characteristics such as knowledge levels, engagement preferences, and task approaches to mirror the diversity seen in real users. Dynamic Environments: Simulate changing environments and scenarios to test the adaptability of the framework in response to evolving circumstances. Feedback Mechanisms: Implement feedback loops within the simulation to capture user responses, adjust plans accordingly, and iterate on task completion strategies. Task Complexity: Include tasks spanning multiple domains (health, finance, education) with varying levels of complexity to challenge the framework's capabilities across different contexts. By integrating these elements into simulations, researchers can create realistic scenarios that closely resemble actual long-term tasks faced by individuals. This approach allows for comprehensive testing and validation of frameworks like GOLF under diverse and dynamic conditions.

How might conversational AI impact user interactions beyond traditional search engines?

Conversational AI has the potential to significantly transform user interactions beyond traditional search engines by enabling more natural language-based communication and personalized assistance. Some key impacts include: Enhanced User Experience: Conversational AI provides a more intuitive interface for users to interact with information systems compared to keyword-based searches. Personalization: By understanding context and intent through conversations, conversational AI can offer tailored recommendations and solutions based on individual preferences. Complex Task Support: Conversational AI enables users to engage in multi-step tasks or complex decision-making processes through guided conversations rather than isolated queries. Continuous Learning: Through ongoing interactions, conversational AI systems improve their understanding of users' needs over time, leading to more accurate responses and proactive suggestions. Overall, conversational AI expands the possibilities for interactive information retrieval by creating engaging dialogues between users and systems that go beyond simple query-response interactions seen in traditional search engines.

What are the ethical considerations when evaluating AI tools for long-term tasks?

When evaluating AI tools like those designed for long-term task management such as GOLF, several ethical considerations must be taken into account: Privacy Protection: Ensure that user data is handled securely during task planning and execution phases while maintaining confidentiality about sensitive personal information. Transparency: Provide clear explanations about how AI algorithms make decisions related to task management so that users understand why certain recommendations are made. Bias Mitigation: Address any biases present in data or algorithms used by ensuring fairness in assisting all users regardless of demographic factors or background characteristics. 4 .Informed Consent: Obtain explicit consent from users before collecting personal data or sharing information with third-party services during long-term task support activities. By prioritizing these ethical considerations throughout the evaluation process of AI tools designed for long-term tasks like GOLF ensures responsible development practices aligning with user trust-building efforts within human-AI collaboration settings..
0
star