Balancing Optimality and Diversity: Human-Centered Decision Making through Generative Curation

Michael Lingzhi Li, Shixiang Zhu
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Abstract

The surge in data availability has inundated decision-makers with an overwhelming array of choices. While existing approaches focus on optimizing decisions based on quantifiable metrics, practical decision-making often requires balancing measurable quantitative criteria with unmeasurable qualitative factors embedded in the broader context. In such cases, algorithms can generate high-quality recommendations, but the final decision rests with the human, who must weigh both dimensions. We define the process of selecting the optimal set of algorithmic recommendations in this context as human-centered decision making. To address this challenge, we introduce a novel framework called generative curation, which optimizes the true desirability of decision options by integrating both quantitative and qualitative aspects. Our framework uses a Gaussian process to model unknown qualitative factors and derives a diversity metric that balances quantitative optimality with qualitative diversity. This trade-off enables the generation of a manageable subset of diverse, near-optimal actions that are robust to unknown qualitative preferences. To operationalize this framework, we propose two implementation approaches: a generative neural network architecture that produces a distribution $\pi$ to efficiently sample a diverse set of near-optimal actions, and a sequential optimization method to iteratively generates solutions that can be easily incorporated into complex optimization formulations. We validate our approach with extensive datasets, demonstrating its effectiveness in enhancing decision-making processes across a range of complex environments, with significant implications for policy and management.
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平衡最优性与多样性:通过 "生成式策划 "进行以人为本的决策
数据可用性的激增给决策者带来了大量的选择。虽然现有方法侧重于根据可量化指标优化决策,但实际决策往往需要平衡可衡量的量化标准和更广泛背景下不可衡量的量化因素。在这种情况下,算法可以生成高质量的建议,但最终的决定权在于人类,人类必须权衡这两个方面。我们将在这种情况下选择最优算法推荐集的过程定义为以人为中心的决策制定。为了应对这一挑战,我们引入了一个名为 "生成式策划 "的新框架,它通过整合定量和定性两个方面来优化决策选项的真实可取性。我们的框架使用高斯过程对未知的定性因素进行建模,并生成一个多样性度量,在定量优化和定性多样性之间取得平衡。通过这种权衡,可以生成一个可管理的多样化、接近最优的行动子集,这些行动对未知的定性偏好具有稳健性。为了实现这一框架,我们提出了两种实现方法:一种是生成式神经网络架构,该架构可以生成分布美元(pi$),从而有效采样多样化的近优行动集;另一种是顺序优化方法,该方法可以迭代生成解决方案,从而轻松纳入复杂的优化公式中。我们用大量数据集验证了我们的方法,证明了它在一系列复杂环境中增强决策过程的有效性,对政策和管理具有重要意义。
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