SILGSOC-PHJan 15, 2020

NEW: A Generic Learning Model for Tie Strength Prediction in Networks

arXiv:2001.05283v18 citations
Originality Highly original
AI Analysis

This work addresses the need for a more flexible and broadly applicable method for predicting tie strengths across diverse network types, rather than being restricted to social networks.

The authors tackled the problem of tie strength prediction in networks, which is often limited to specific contexts like social networks, by proposing a generic computational framework called NEW that uses basic structural information and achieves state-of-the-art performance on six real-world networks.

Tie strength prediction, sometimes named weight prediction, is vital in exploring the diversity of connectivity pattern emerged in networks. Due to the fundamental significance, it has drawn much attention in the field of network analysis and mining. Some related works appeared in recent years have significantly advanced our understanding of how to predict the strong and weak ties in the social networks. However, most of the proposed approaches are scenario-aware methods heavily depending on some special contexts and even exclusively used in social networks. As a result, they are less applicable to various kinds of networks. In contrast to the prior studies, here we propose a new computational framework called Neighborhood Estimating Weight (NEW) which is purely driven by the basic structure information of the network and has the flexibility for adapting to diverse types of networks. In NEW, we design a novel index, i.e., connection inclination, to generate the representative features of the network, which is capable of capturing the actual distribution of the tie strength. In order to obtain the optimized prediction results, we also propose a parameterized regression model which approximately has a linear time complexity and thus is readily extended to the implementation in large-scale networks. The experimental results on six real-world networks demonstrate that our proposed predictive model outperforms the state of the art methods, which is powerful for predicting the missing tie strengths when only a part of the network's tie strength information is available.

Foundations

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