While geographical metadata referring to the originating locations of tweets provides valuable information to perform effective spatial analysis in social networks, scarcity of such geotagged tweets imposes limitations on their usability. In this work, we propose a content-based location prediction method for tweets by analyzing the geographical distribution of tweet texts using Kernel Density Estimation (KDE). The primary novelty of our work is to determine different settings of kernel functions for every term in tweets based on the location indicativeness of these terms. Our proposed method, which we call locality-adapted KDE, uses information-theoretic metrics and does not require any parameter tuning for these settings. As a further enh...
This paper describes an approach to infer the location of a social media post at a hyper-local scale...
This paper describes an approach to infer the location of a social media post at a hyper-local scale...
This paper describes an approach to infer the location of a social media post at a hyper-local scale...
Predicting the locations of non-geotagged tweets is an active research area in geographical informat...
Predicting the locations of non-geotagged tweets is an active research area in geographical informat...
Text-based geolocation classifiers often operate with a grid-based view of the world. Predicting do...
AbstractGiven a tweet, a machine learning model when after undertaking the training, development and...
International audienceFive hundred millions of tweets are posted daily, makingTwitter a major social...
AbstractGiven a tweet, a machine learning model when after undertaking the training, development and...
Text-based geolocation classifiers often operate with a grid-based view of the world. Predicting doc...
This paper describes an approach to infer the location of a social media post at a hyper-local scale...
Geographical location is vital to geospatial applications like local search and event detection. In ...
This paper describes an approach to infer the location of a social media post at a hyper-local scale...
Locations, e.g., countries, states, cities, and point-of-interests, are central to news, emergency e...
Locations, e.g., countries, states, cities, and point-of-interests, are central to news, emergency e...
This paper describes an approach to infer the location of a social media post at a hyper-local scale...
This paper describes an approach to infer the location of a social media post at a hyper-local scale...
This paper describes an approach to infer the location of a social media post at a hyper-local scale...
Predicting the locations of non-geotagged tweets is an active research area in geographical informat...
Predicting the locations of non-geotagged tweets is an active research area in geographical informat...
Text-based geolocation classifiers often operate with a grid-based view of the world. Predicting do...
AbstractGiven a tweet, a machine learning model when after undertaking the training, development and...
International audienceFive hundred millions of tweets are posted daily, makingTwitter a major social...
AbstractGiven a tweet, a machine learning model when after undertaking the training, development and...
Text-based geolocation classifiers often operate with a grid-based view of the world. Predicting doc...
This paper describes an approach to infer the location of a social media post at a hyper-local scale...
Geographical location is vital to geospatial applications like local search and event detection. In ...
This paper describes an approach to infer the location of a social media post at a hyper-local scale...
Locations, e.g., countries, states, cities, and point-of-interests, are central to news, emergency e...
Locations, e.g., countries, states, cities, and point-of-interests, are central to news, emergency e...
This paper describes an approach to infer the location of a social media post at a hyper-local scale...
This paper describes an approach to infer the location of a social media post at a hyper-local scale...
This paper describes an approach to infer the location of a social media post at a hyper-local scale...