SIAILGFeb 11, 2021

Demarcating Endogenous and Exogenous Opinion Dynamics: An Experimental Design Approach

arXiv:2102.05954v12 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of accurate opinion prediction in social networks, which is important for researchers and practitioners in social computing, but it appears incremental as it builds on existing experimental design approaches.

The paper tackles the problem of distinguishing endogenous from exogenous opinions in online social networks to improve opinion modeling, and demonstrates that their unsupervised classification methods significantly enhance opinion forecasting accuracy compared to competitors.

The networked opinion diffusion in online social networks (OSN) is often governed by the two genres of opinions - endogenous opinions that are driven by the influence of social contacts among users, and exogenous opinions which are formed by external effects like news, feeds etc. Accurate demarcation of endogenous and exogenous messages offers an important cue to opinion modeling, thereby enhancing its predictive performance. In this paper, we design a suite of unsupervised classification methods based on experimental design approaches, in which, we aim to select the subsets of events which minimize different measures of mean estimation error. In more detail, we first show that these subset selection tasks are NP-Hard. Then we show that the associated objective functions are weakly submodular, which allows us to cast efficient approximation algorithms with guarantees. Finally, we validate the efficacy of our proposal on various real-world datasets crawled from Twitter as well as diverse synthetic datasets. Our experiments range from validating prediction performance on unsanitized and sanitized events to checking the effect of selecting optimal subsets of various sizes. Through various experiments, we have found that our method offers a significant improvement in accuracy in terms of opinion forecasting, against several competitors.

Foundations

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