Similarity search is an important
function in many applications, which usually focuses on measuring the
similarity between objects with the same type. However, in many scenarios, we
need to measure the relatedness between objects with different types. With the
surge of study on heterogeneous networks, the relevance measure on objects with
different types becomes increasingly important. In this paper, we study the
relevance search problem in heterogeneous networks, where the task is to
measure the relatedness of heterogeneous objects (including objects with the
same type or different types). A novel measure HeteSim is proposed, which has
the following attributes: (1) a uniform measure: it can measure the relatedness
of objects with the same or different types in a uniform framework; (2) a
path-constrained measure: the relatedness of object pairs are defined based on
the search path that connects two objects through following a sequence of node
types; (3) a semi-metric measure: HeteSim has some good properties (e.g.,
self-maximum and symmetric), which are crucial to many data mining tasks.
Moreover, we analyze the computation characteristics of HeteSim and propose the
corresponding quick computation strategies. Empirical studies show that HeteSim
can effectively and efficiently evaluate the relatedness of heterogeneous
objects.
No comments:
Post a Comment