Network embedding methods map a network's nodes to vectors in an embedding space, in such a way that these representations are useful for estimating some notion of similarity or proximity between pairs of nodes in the network. The quality of these node representations is then showcased through results of downstream prediction tasks. Commonly used benchmark tasks such as link prediction, however, present complex evaluation pipelines and an abundance of design choices. This, together with a lack of standardized evaluation setups can obscure the real progress in the field. In this paper, we aim to shed light on the state-of-the-art of network embedding methods for link prediction and show, using a consistent evaluation pipeline, that only thin...
Networks are powerful data structures, but are challenging to work with for conventional machine lea...
Graphs (also called networks) are powerful data abstractions, but they are challenging to work with,...
In this paper we present EvalNE, a Python toolbox for evaluating network embedding methods on link p...
Network embedding methods map a network's nodes to vectors in an embedding space, in such a way that...
Network embedding methods map a network's nodes to vectors in an embedding space, in such a way that...
Network representation learning has become an active research area in recent years with many new met...
Network representation learning has become an active research area in recent years with many new met...
Network embedding (NE) methods aim to learn low-dimensional representations of network nodes as vect...
Network embedding (NE) methods aim to learn low-dimensional representations of network nodes as vect...
Network embedding (NE) methods aim to learn low-dimensional representations of network nodes as vect...
Network embedding (NE) methods aim to learn low-dimensional representations of network nodes as vect...
Network representation learning methods map network nodes to vectors in an embedding space that can ...
In this paper, we present EvalNE, a Python toolbox for evaluating network embedding methods on link ...
In this paper, we present EvalNE, a Python toolbox for evaluating network embedding methods on link ...
Networks are powerful data structures, but are challenging to work with for conventional machine lea...
Networks are powerful data structures, but are challenging to work with for conventional machine lea...
Graphs (also called networks) are powerful data abstractions, but they are challenging to work with,...
In this paper we present EvalNE, a Python toolbox for evaluating network embedding methods on link p...
Network embedding methods map a network's nodes to vectors in an embedding space, in such a way that...
Network embedding methods map a network's nodes to vectors in an embedding space, in such a way that...
Network representation learning has become an active research area in recent years with many new met...
Network representation learning has become an active research area in recent years with many new met...
Network embedding (NE) methods aim to learn low-dimensional representations of network nodes as vect...
Network embedding (NE) methods aim to learn low-dimensional representations of network nodes as vect...
Network embedding (NE) methods aim to learn low-dimensional representations of network nodes as vect...
Network embedding (NE) methods aim to learn low-dimensional representations of network nodes as vect...
Network representation learning methods map network nodes to vectors in an embedding space that can ...
In this paper, we present EvalNE, a Python toolbox for evaluating network embedding methods on link ...
In this paper, we present EvalNE, a Python toolbox for evaluating network embedding methods on link ...
Networks are powerful data structures, but are challenging to work with for conventional machine lea...
Networks are powerful data structures, but are challenging to work with for conventional machine lea...
Graphs (also called networks) are powerful data abstractions, but they are challenging to work with,...
In this paper we present EvalNE, a Python toolbox for evaluating network embedding methods on link p...