MLLGAPJul 10, 2020

Next Waves in Veridical Network Embedding

arXiv:2007.05385v26 citations
AI Analysis

This work addresses the problem of fragmented and domain-specific evaluations in network embedding for researchers and practitioners, though it is incremental as it adapts an existing framework.

The authors tackled the challenge of systematically studying diverse network embedding algorithms by proposing a framework based on the Veridical Data Science principles, aiming to unify evaluation and inspire future research directions.

Embedding nodes of a large network into a metric (e.g., Euclidean) space has become an area of active research in statistical machine learning, which has found applications in natural and social sciences. Generally, a representation of a network object is learned in a Euclidean geometry and is then used for subsequent tasks regarding the nodes and/or edges of the network, such as community detection, node classification and link prediction. Network embedding algorithms have been proposed in multiple disciplines, often with domain-specific notations and details. In addition, different measures and tools have been adopted to evaluate and compare the methods proposed under different settings, often dependent of the downstream tasks. As a result, it is challenging to study these algorithms in the literature systematically. Motivated by the recently proposed Veridical Data Science (VDS) framework, we propose a framework for network embedding algorithms and discuss how the principles of predictability, computability and stability apply in this context. The utilization of this framework in network embedding holds the potential to motivate and point to new directions for future research.

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