Leveraging textual and spatial data provided in spatio-textual objects (eg., tweets), has become increasingly important in real-world applications, favoured by the increasing rate of their availability these last decades (eg., through smartphones). In this paper, we propose a spatial retrofitting method of word embeddings that could reveal the localised similarity of word pairs as well as the diversity of their localised meanings. Experiments based on the semantic location prediction task show that our method achieves significant improvement over strong baselines
Predicting the locations of non-geotagged tweets is an active research area in geographical informat...
Nowadays word embeddings are used for many natural language processing (NLP) tasks thanks to their a...
Nowadays an increasing amount of web-accessible information on spatial objects becomes available to ...
Stimulated by the heavy use of smartphones, the joint use of textual and spatial data in space-textu...
Stimulated by the heavy use of smartphones, the joint use of textual and spatial data in space-textu...
Stimulated by the heavy use of smartphones, the joint use of textual and spatial data in space-textu...
Measuring the semantic similarity between words is important for natural language processing tasks. ...
International audienceThe impressive increasing availability of social media posts has given rise to...
International audienceThe impressive increasing availability of social media posts has given rise to...
Herrmann JB, Byszuk J, Grisot G. Using Word Embeddings for Validation and Enhancement of Spatial Ent...
Stimulée par l'usage intensif des téléphones mobiles, l'exploitation conjointe des données textuelle...
Predicting the locations of non-geotagged tweets is an active research area in geographical informat...
Textual data is available to an increasing extent through different media (social networks, companie...
Textual data is available to an increasing extent through different media (social networks, companie...
Textual data is available to an increasing extent through different media (social networks, companie...
Predicting the locations of non-geotagged tweets is an active research area in geographical informat...
Nowadays word embeddings are used for many natural language processing (NLP) tasks thanks to their a...
Nowadays an increasing amount of web-accessible information on spatial objects becomes available to ...
Stimulated by the heavy use of smartphones, the joint use of textual and spatial data in space-textu...
Stimulated by the heavy use of smartphones, the joint use of textual and spatial data in space-textu...
Stimulated by the heavy use of smartphones, the joint use of textual and spatial data in space-textu...
Measuring the semantic similarity between words is important for natural language processing tasks. ...
International audienceThe impressive increasing availability of social media posts has given rise to...
International audienceThe impressive increasing availability of social media posts has given rise to...
Herrmann JB, Byszuk J, Grisot G. Using Word Embeddings for Validation and Enhancement of Spatial Ent...
Stimulée par l'usage intensif des téléphones mobiles, l'exploitation conjointe des données textuelle...
Predicting the locations of non-geotagged tweets is an active research area in geographical informat...
Textual data is available to an increasing extent through different media (social networks, companie...
Textual data is available to an increasing extent through different media (social networks, companie...
Textual data is available to an increasing extent through different media (social networks, companie...
Predicting the locations of non-geotagged tweets is an active research area in geographical informat...
Nowadays word embeddings are used for many natural language processing (NLP) tasks thanks to their a...
Nowadays an increasing amount of web-accessible information on spatial objects becomes available to ...