Afshin Rahimi
University of Melbourne
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Publication
Featured researches published by Afshin Rahimi.
north american chapter of the association for computational linguistics | 2015
Afshin Rahimi; Duy Vu; Trevor Cohn; Timothy Baldwin
Research on automatically geolocating social media users has conventionally been based on the text content of posts from a given user or the social network of the user, with very little crossover between the two, and no bench-marking of the two approaches over compara- ble datasets. We bring the two threads of research together in first proposing a text-based method based on adaptive grids, followed by a hybrid network- and text-based method. Evaluating over three Twitter datasets, we show that the empirical difference between text- and network-based methods is not great, and that hybridisation of the two is superior to the component methods, especially in contexts where the user graph is not well connected. We achieve state-of-the-art results on all three datasets.
meeting of the association for computational linguistics | 2017
Afshin Rahimi; Trevor Cohn; Timothy Baldwin
We propose a simple yet effective text- based user geolocation model based on a neural network with one hidden layer, which achieves state of the art performance over three Twitter benchmark geolocation datasets, in addition to producing word and phrase embeddings in the hidden layer that we show to be useful for detecting dialectal terms. As part of our analysis of dialectal terms, we release DAREDS, a dataset for evaluating dialect term detection methods.
meeting of the association for computational linguistics | 2016
Afshin Rahimi; Trevor Cohn; Timothy Baldwin
We present pigeo, a Python geolocation prediction tool that predicts a location for a given text input or Twitter user. We discuss the design, implementation and application of pigeo, and empirically evaluate it. pigeo is able to geolocate informal text and is a very useful tool for users who require a free and easy-to-use, yet accurate geolocation service based on pre-trained models. Additionally, users can train their own models easily using pigeos API.
international conference on computational linguistics | 2016
Bo Han; Afshin Rahimi; Leon Derczynski; Timothy Baldwin
web science | 2016
Walid Magdy; Kareem Darwish; Norah Abokhodair; Afshin Rahimi; Timothy Baldwin
international joint conference on natural language processing | 2015
Afshin Rahimi; Trevor Cohn; Timothy Baldwin
empirical methods in natural language processing | 2017
Afshin Rahimi; Timothy Baldwin; Trevor Cohn
Proceedings of the Australasian Language Technology Association Workshop 2014 | 2014
Fei Liu; Afshin Rahimi; Bahar Salehi; Miji Choi; Ping Tan; Long Duong
web science | 2018
Kareem Darwish; Walid Magdy; Afshin Rahimi; Timothy Baldwin; Norah Abokhodair
meeting of the association for computational linguistics | 2018
Afshin Rahimi; Trevor Cohn; Timothy Baldwin