In this paper we present EvalNE, a Python toolbox for evaluating network embedding methods on link prediction tasks. Link prediction is one of the most popular choices for evaluating the quality of network embeddings. However, the complexity of this task requires a carefully designed evaluation pipeline in order to provide consistent, reproducible and comparable results. EvalNE simplifies this process by providing automation and abstraction of tasks such as hyper-parameter tuning and model validation, edge sampling and negative edge sampling, computation of edge embeddings from node embeddings, and evaluation metrics. The toolbox allows for the evaluation of any off-the-shelf embedding method without the need to write extra code. Moreover, ...
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...
In this paper we present EvalNE, a Python toolbox for evaluating network embedding methods on link p...
In this paper we present EvalNE, a Python toolbox for evaluating network embedding methods on link p...
In this paper we present EvalNE, a Python toolbox for evaluating network embedding methods on link p...
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...
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 ...
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...
In this paper we introduce EvalNE, a Python toolbox for network embedding evaluation. The main goal ...
In this paper we introduce EvalNE, a Python toolbox for network embedding evaluation. The main goal ...
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 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...
In this paper we present EvalNE, a Python toolbox for evaluating network embedding methods on link p...
In this paper we present EvalNE, a Python toolbox for evaluating network embedding methods on link p...
In this paper we present EvalNE, a Python toolbox for evaluating network embedding methods on link p...
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...
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 ...
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...
In this paper we introduce EvalNE, a Python toolbox for network embedding evaluation. The main goal ...
In this paper we introduce EvalNE, a Python toolbox for network embedding evaluation. The main goal ...
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 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...