Measuring similarities between objects based on their attributes has been an important problem in many disciplines. Object-attribute associations can be depicted as links on a bipartite graph. A similarity measure can be thought as a unipartite projection of this bipartite graph. The most widely used bipartite projection techniques make assumptions that are not often fulfilled in real life systems, or have the focus on the bipartite connections more than on the unipartite connections. Here, we define a new similarity measure that utilizes a practical procedure to extract unipartite graphs without making a priori assumptions about underlying distributions. Our similarity measure captures the relatedness between two objects via the likelihood...
We consider methods for quantifying the similarity of vertices in networks. We propose a measure of ...
In this thesis, we propose many developments in the context of Structural Similarity. We address bot...
In this thesis, we propose many developments in the context of Structural Similarity. We address bot...
Measuring similarities between objects based on their attributes has been an important problem in ma...
Measuring similarities between objects based on their attributes has been an important problem in ma...
This work presents a new perspective on characterizing the similarity between elements of a database...
Abstract. In this paper we propose a solution to the similarity measur-ing for heterogenous data. Th...
This work presents a new perspective on characterizing the similarity between elements of a database...
A system and method for determining similarity of nodes on a graph using product similarity scores i...
Appropriately defining and efficiently calculating similarities from large data sets are often essen...
Appropriately defining and efficiently calculating similarities from large data sets are often essen...
Abstract — Computing meaningful clusters of nodes is crucial to analyze large networks. In this pape...
We consider methods for quantifying the similarity of vertices in networks. We propose a measure of ...
Bipartite networks are currently regarded as providing a major insight into the organization of many...
Bipartite networks are currently regarded as providing a major insight into the organization of many...
We consider methods for quantifying the similarity of vertices in networks. We propose a measure of ...
In this thesis, we propose many developments in the context of Structural Similarity. We address bot...
In this thesis, we propose many developments in the context of Structural Similarity. We address bot...
Measuring similarities between objects based on their attributes has been an important problem in ma...
Measuring similarities between objects based on their attributes has been an important problem in ma...
This work presents a new perspective on characterizing the similarity between elements of a database...
Abstract. In this paper we propose a solution to the similarity measur-ing for heterogenous data. Th...
This work presents a new perspective on characterizing the similarity between elements of a database...
A system and method for determining similarity of nodes on a graph using product similarity scores i...
Appropriately defining and efficiently calculating similarities from large data sets are often essen...
Appropriately defining and efficiently calculating similarities from large data sets are often essen...
Abstract — Computing meaningful clusters of nodes is crucial to analyze large networks. In this pape...
We consider methods for quantifying the similarity of vertices in networks. We propose a measure of ...
Bipartite networks are currently regarded as providing a major insight into the organization of many...
Bipartite networks are currently regarded as providing a major insight into the organization of many...
We consider methods for quantifying the similarity of vertices in networks. We propose a measure of ...
In this thesis, we propose many developments in the context of Structural Similarity. We address bot...
In this thesis, we propose many developments in the context of Structural Similarity. We address bot...