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You Shall Know a User by the Company It Keeps: Dynamic Representations for Social Media Users in NLP

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arxiv 1909.00412 v1 pith:IM6L5BU5 submitted 2019-09-01 cs.CL

You Shall Know a User by the Company It Keeps: Dynamic Representations for Social Media Users in NLP

classification cs.CL
keywords socialconnectionsinformationmediauserattentioncurrentgraph
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Information about individuals can help to better understand what they say, particularly in social media where texts are short. Current approaches to modelling social media users pay attention to their social connections, but exploit this information in a static way, treating all connections uniformly. This ignores the fact, well known in sociolinguistics, that an individual may be part of several communities which are not equally relevant in all communicative situations. We present a model based on Graph Attention Networks that captures this observation. It dynamically explores the social graph of a user, computes a user representation given the most relevant connections for a target task, and combines it with linguistic information to make a prediction. We apply our model to three different tasks, evaluate it against alternative models, and analyse the results extensively, showing that it significantly outperforms other current methods.

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