Human-Machine Collaboration-Guided Space Design: Combination of Machine Learning Models and Humanistic Design Concepts
Yuxuan Yang

TL;DR
This paper presents a framework for integrating machine learning models with human-centered design principles to create spatial environments that are both efficient and emotionally resonant, emphasizing collaboration over automation alone.
Contribution
It introduces a novel human-machine collaboration framework that combines ML automation with human creativity to enhance emotional and cultural relevance in space design.
Findings
ML models automate and optimize design tasks
Human input ensures emotional and cultural relevance
Case studies demonstrate improved design outcomes
Abstract
The integration of machine learning (ML) into spatial design holds immense potential for optimizing space utilization, enhancing functionality, and streamlining design processes. ML can automate tasks, predict performance outcomes, and tailor spaces to user preferences. However, the emotional, cultural, and aesthetic dimensions of design remain crucial for creating spaces that truly resonate with users-elements that ML alone cannot address. The key challenge lies in harmonizing data-driven efficiency with the nuanced, subjective aspects of design. This paper proposes a human-machine collaboration framework to bridge this gap. An effective framework should recognize that while ML enhances design efficiency through automation and prediction, it must be paired with human creativity to ensure spaces are emotionally engaging and culturally relevant. Human designers contribute intuition,…
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Taxonomy
TopicsArchitecture and Computational Design · Design Education and Practice · Building Energy and Comfort Optimization
