We study the Sum of Squares (SoS) Hierarchy with a view towards combinatorial optimization. We survey the use of the SoS hierarchy to obtain approximation algorithms on graphs using their spectral properties. We present a simplified proof of the result of Feige and Krauthgamer on the performance of the hierarchy for the Maximum Clique problem on random graphs. We also present a result of Guruswami and Sinop that shows how to obtain approximation algorithms for the Minimum Bisection problem on low threshold-rank graphs. We study inapproximability results for the SoS hierarchy for general constraint satisfaction problems and problems involving graph densities such as the Densest $k$-subgraph problem. We improve the existing inapproximability results for general constraint satisfaction problems in the case of large arity, using stronger probabilistic analyses of expansion of random instances. We examine connections between constraint satisfaction problems and density problems on graphs. Using them, we obtain new inapproximability results for the hierarchy for the Densest $k$-subhypergraph problem and the Minimum $p$-Union problem, which are proven via reductions. We also illustrate the relatively new idea of pseudocalibration to construct integrality gaps for the SoS hierarchy for Maximum Clique and Max $K$-CSP. The application to Max $K$-CSP that we present is known in the community but has not been presented before in the literature, to the best of our knowledge.
翻译:我们用光谱特性调查SOS等级的使用情况,以获得图形密度的近似算法。我们用随机图显示Feige和Krauthgamer关于最大晶度问题等级的性能的简化证明。我们还用随机图显示Guruswami和Sinop的结果,显示如何在低门槛图表中为最小分解问题获得近似算法。我们研究SOS等级在一般制约性满意度问题和涉及图形密度的问题,例如Densest $k$-Subphraphygraphy问题方面的不兼容性结果。我们用对随机事件扩张的更强的概率分析,改进Fege和Krauthgamer关于最大晶度问题总体满意度问题的现有不匹配性结果。我们用它们来研究限制性满意度问题与图表中最小分解度问题之间的联系。我们用它们为Densest $k$次分数的文献的等级提出了新的不兼容性结果。我们用最起码的美元-K-C 模型来解释我们目前最接近的美元等级问题。