Personalized word representations Carrying Personalized Semantics Learned from Social Network Posts
Zih-Wei Lin, Tzu-Wei Sung, Hung-Yi Lee, Lin-Shan Lee

TL;DR
This paper introduces a framework for creating personalized word vectors from social network data, capturing individual-specific semantics and improving task performance over universal vectors.
Contribution
It proposes a method to adapt universal word vectors to individual users using social media data, capturing personalized semantics for better NLP task performance.
Findings
Personalized word vectors encode individual-specific semantics.
The approach improves user prediction accuracy.
Enhanced sentence completion results with personalized vectors.
Abstract
Distributed word representations have been shown to be very useful in various natural language processing (NLP) application tasks. These word vectors learned from huge corpora very often carry both semantic and syntactic information of words. However, it is well known that each individual user has his own language patterns because of different factors such as interested topics, friend groups, social activities, wording habits, etc., which may imply some kind of personalized semantics. With such personalized semantics, the same word may imply slightly differently for different users. For example, the word "Cappuccino" may imply "Leisure", "Joy", "Excellent" for a user enjoying coffee, by only a kind of drink for someone else. Such personalized semantics of course cannot be carried by the standard universal word vectors trained with huge corpora produced by many people. In this paper, we…
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Taxonomy
TopicsTopic Modeling · Natural Language Processing Techniques · Text and Document Classification Technologies
