可预测性
推论
计算机科学
复杂网络
缩放比例
算法
数据挖掘
网络分析
链接(几何体)
统计推断
采样(信号处理)
理论计算机科学
数学
网络理论
人工智能
网络科学
计算复杂性理论
网络模型
差异(会计)
动态网络分析
生物网络
网络结构
复杂系统
随机过程
数学优化
作者
Fei Jing,Zi-Ke Zhang,Qingpeng Zhang,G. Parisi
标识
DOI:10.1073/pnas.2535161123
摘要
We establish network predictability theory by mapping link prediction onto a spin glass model, where network partitions correspond to spin configurations, and predictability equals the system's average energy. Using the cavity method from statistical physics, we prove that global predictability decomposes into individual link contributions, enabling an efficient local sampling algorithm that reduces the computational complexity of evaluating individual link contributions from being dependent on the entire network to only its local neighborhood, scaling with the average degree. We derive exact results for canonical network models: Erdös-Rényi networks exhibit universal predictability of 0.5 regardless of algorithm choice, establishing the random baseline, while structured networks show predictability controlled by their prior parameters. We introduce the predictability index, which quantifies the maximum achievable performance without information loss and accurately predicts algorithm performance under random division. Analysis of real networks validates our framework, revealing how degree heterogeneity and structural patterns govern predictability. This physics-based approach provides both theoretical insights into link prediction limits and practical tools for assessing network reconstruction potential, with implications for applications from biological network inference to social network analysis.
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