Many algorithms for ranked data become computationally intractable as the number of objects grows due to the complex geometric structure induced by rankings. An additional challenge is posed by partial rankings, i.e. rankings in which the preference is only known for a subset of all objects. For these reasons, state-of-the-art methods cannot scale to real-world applications, such as recommender systems. We address this challenge by exploiting the geometric structure of ranked data and additional available information about the objects to derive a kernel for ranking based on the graph cut function. The graph cut kernel combines the efficiency of submodular optimization with the theoretical properties of kernel-based methods. The graph cut kernel combines the efficiency of submodular optimization with the theoretical properties of kernel-based methods.
翻译:排名数据的许多算法在计算上变得难以处理,因为排名引发的复杂几何结构导致对象数量增加。 部分排名带来了另一个挑战,即只知道所有对象子集优先的排序。由于这些原因,最先进的方法无法推广到真实世界的应用,例如建议系统。我们通过利用排名数据的几何结构和关于根据图形切换功能得出排序对象内核的额外可得信息来应对这一挑战。图形切换内核将亚模块优化的效率和内核法的理论属性结合起来。图形切换内核将亚模块优化的效率和内核法的理论属性结合起来。图形切换内核将亚模块优化的效率和内核法的理论属性结合起来。