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Market Graph Clustering via QUBO and Digital Annealing

机译:通过Qubo和Digital退火的市场图集群

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We present a novel technique for cardinality-constrained index-tracking, a common task in the financial industry. Our approach is based on market graph models. We model our reference indices as market graphs and express the index-tracking problem as a quadratic K-medoids clustering problem. We take advantage of a purpose-built hardware architecture to circumvent the NP-hard nature of the problem and solve our formulation efficiently. The main contributions of this article are bridging three separate areas of the literature, market graph models, K-medoid clustering and quadratic binary optimization modeling, to formulate the index-tracking problem as a binary quadratic K-medoid graph-clustering problem. Our initial results show we accurately replicate the returns of various market indices, using only a small subset of their constituent assets. Moreover, our binary quadratic formulation allows us to take advantage of recent hardware advances to overcome the NP-hard nature of the problem and obtain solutions faster than with traditional architectures and solvers.
机译:我们提出了一种新的基数受限指数跟踪技术,金融行业的共同任务。我们的方法是基于市场图形模型。我们将我们的参考指数塑造为市场图表,并将索引跟踪问题表达为二次k-medoids聚类问题。我们利用了一个目的内置的硬件架构来规避问题的NP难性,并有效地解决我们的配方。本文的主要贡献遍历文献的三个单独的领域,市场图模型,k-yemoid聚类和二次二进制优化建模,以将索引跟踪问题作为二进制二元k-yemoid格图聚类问题。我们的初始结果表明,我们只需使用一小部分组成资产,准确地复制各种市场指数的回报。此外,我们的二进制二元制定使我们能够利用最近的硬件进步来克服问题的NP难性,并使解决方案比传统架构和求解器更快。

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