As social media have become an integral part of many people’s everyday life, there has been an increasing interest in exploring how the content shared through those online platforms comes to contribute to the collaborative creation of places in physical space. Indeed, the distinction between online and physical spaces and activities is rapidly degrading. However, exploring those digital geographies is a complex task, due to the quantity and variety of data. In this paper, we introduce a semi-supervised, deep neural network approach to classify geo-located social media posts based on their text content, media content, and geographic location, using a limited set of pre-defined categories. Our approach combines a stacked multi-modal autoencod...
Traditional methods for studying the activity dynamics of people and their social interactions in ci...
We describe an approach for multi-modal characterization of social media by combining text features ...
The article of record as published may be found at http://dx.doi.org/10.1145/2733373.2806357.We prop...
As social media have become an integral part of many people’s everyday life, there has been an incre...
As the distinction between online and physical spaces rapidly degrades, social media have now become...
In this work, we consider the exploitation of social media data in the context of Remote Sensing and...
Social media user geolocation is vital to many applications such as event detection. In this paper, ...
This paper presents a machine learning-based classifier for detecting points of interest through the...
In this work we present a framework for the unsupervised extraction of latent geographic features fr...
Location-based embedding is a fundamental problem to solve in location-based social network (LBSN). ...
In this work, we consider the exploitation of social media data in the context of Remote Sensing and...
Inferring the location of a user has been a valuable step for many applications that leverage social...
Online social networks such as Facebook and Twitter have started allowing users to tag their posts w...
Research on automatically geolocating social media users has conventionally been based on the text c...
Information processing a b s t r a c t The first step towards efficient social media content analysi...
Traditional methods for studying the activity dynamics of people and their social interactions in ci...
We describe an approach for multi-modal characterization of social media by combining text features ...
The article of record as published may be found at http://dx.doi.org/10.1145/2733373.2806357.We prop...
As social media have become an integral part of many people’s everyday life, there has been an incre...
As the distinction between online and physical spaces rapidly degrades, social media have now become...
In this work, we consider the exploitation of social media data in the context of Remote Sensing and...
Social media user geolocation is vital to many applications such as event detection. In this paper, ...
This paper presents a machine learning-based classifier for detecting points of interest through the...
In this work we present a framework for the unsupervised extraction of latent geographic features fr...
Location-based embedding is a fundamental problem to solve in location-based social network (LBSN). ...
In this work, we consider the exploitation of social media data in the context of Remote Sensing and...
Inferring the location of a user has been a valuable step for many applications that leverage social...
Online social networks such as Facebook and Twitter have started allowing users to tag their posts w...
Research on automatically geolocating social media users has conventionally been based on the text c...
Information processing a b s t r a c t The first step towards efficient social media content analysi...
Traditional methods for studying the activity dynamics of people and their social interactions in ci...
We describe an approach for multi-modal characterization of social media by combining text features ...
The article of record as published may be found at http://dx.doi.org/10.1145/2733373.2806357.We prop...