{"_id":"zm3xQGaL3hSgWhH7r","bibbaseid":"agrawal-gupta-narayanan-multimodaldetectionoffakesocialmediausethroughafusionofclassificationandpairwiserankingsystems-2017","authorIDs":["5e18f5f88fcbc2df01000180"],"author_short":["Agrawal, T.","Gupta, R.","Narayanan, S."],"bibdata":{"bibtype":"inproceedings","type":"inproceedings","author":[{"firstnames":["T."],"propositions":[],"lastnames":["Agrawal"],"suffixes":[]},{"firstnames":["R."],"propositions":[],"lastnames":["Gupta"],"suffixes":[]},{"firstnames":["S."],"propositions":[],"lastnames":["Narayanan"],"suffixes":[]}],"booktitle":"2017 25th European Signal Processing Conference (EUSIPCO)","title":"Multimodal detection of fake social media use through a fusion of classification and pairwise ranking systems","year":"2017","pages":"1045-1049","abstract":"The problem of detecting misinformation and fake content on social media is gaining importance with the increase in popularity of these social media platforms. Researchers have addressed this content analysis problem using machine learning tools with innovations in feature engineering as well as algorithm design. However, most of the machine learning approaches use a conventional classification setting, involving training a classifier on a set of features. In this work, we propose a fusion of a pairwise ranking approach and a classification system in detecting tweets with misinformation that include multimedia content. Pairwise ranking allows comparison between two objects and returns a preference score for the first object in the pair in comparison to the second object. We design a ranking system to determine the legitimacy score for a tweet with reference to another tweet from the same topic of discussion (as hashtagged on Twitter), thereby allowing a contextual comparison. Finally, we incorporate the ranking system outputs within the classification system. The proposed fusion obtains an Unweighted Average Recall (UAR) of 83.5% in classifying misinforming tweets against genuine tweets, a significant improvement over a classification only baseline system (UAR: 80.1%).","keywords":"data analysis;learning (artificial intelligence);pattern classification;social networking (online);multimodal detection;fake social media;misinformation;content analysis problem;machine learning tools;pairwise ranking approach;classification system;multimedia content;Twitter;Feature extraction;Training;Multimedia communication;Twitter;Transform coding;Fake multimedia detection;Learning to rank","doi":"10.23919/EUSIPCO.2017.8081367","issn":"2076-1465","month":"Aug","url":"https://www.eurasip.org/proceedings/eusipco/eusipco2017/papers/1570347926.pdf","bibtex":"@InProceedings{8081367,\n author = {T. Agrawal and R. Gupta and S. Narayanan},\n booktitle = {2017 25th European Signal Processing Conference (EUSIPCO)},\n title = {Multimodal detection of fake social media use through a fusion of classification and pairwise ranking systems},\n year = {2017},\n pages = {1045-1049},\n abstract = {The problem of detecting misinformation and fake content on social media is gaining importance with the increase in popularity of these social media platforms. Researchers have addressed this content analysis problem using machine learning tools with innovations in feature engineering as well as algorithm design. However, most of the machine learning approaches use a conventional classification setting, involving training a classifier on a set of features. In this work, we propose a fusion of a pairwise ranking approach and a classification system in detecting tweets with misinformation that include multimedia content. Pairwise ranking allows comparison between two objects and returns a preference score for the first object in the pair in comparison to the second object. We design a ranking system to determine the legitimacy score for a tweet with reference to another tweet from the same topic of discussion (as hashtagged on Twitter), thereby allowing a contextual comparison. Finally, we incorporate the ranking system outputs within the classification system. The proposed fusion obtains an Unweighted Average Recall (UAR) of 83.5% in classifying misinforming tweets against genuine tweets, a significant improvement over a classification only baseline system (UAR: 80.1%).},\n keywords = {data analysis;learning (artificial intelligence);pattern classification;social networking (online);multimodal detection;fake social media;misinformation;content analysis problem;machine learning tools;pairwise ranking approach;classification system;multimedia content;Twitter;Feature extraction;Training;Multimedia communication;Twitter;Transform coding;Fake multimedia detection;Learning to rank},\n doi = {10.23919/EUSIPCO.2017.8081367},\n issn = {2076-1465},\n month = {Aug},\n url = {https://www.eurasip.org/proceedings/eusipco/eusipco2017/papers/1570347926.pdf},\n}\n\n","author_short":["Agrawal, T.","Gupta, R.","Narayanan, S."],"key":"8081367","id":"8081367","bibbaseid":"agrawal-gupta-narayanan-multimodaldetectionoffakesocialmediausethroughafusionofclassificationandpairwiserankingsystems-2017","role":"author","urls":{"Paper":"https://www.eurasip.org/proceedings/eusipco/eusipco2017/papers/1570347926.pdf"},"keyword":["data analysis;learning (artificial intelligence);pattern classification;social networking (online);multimodal detection;fake social media;misinformation;content analysis problem;machine learning tools;pairwise ranking approach;classification system;multimedia content;Twitter;Feature extraction;Training;Multimedia communication;Twitter;Transform coding;Fake multimedia detection;Learning to rank"],"metadata":{"authorlinks":{}},"downloads":0},"bibtype":"inproceedings","biburl":"https://raw.githubusercontent.com/Roznn/EUSIPCO/main/eusipco2017url.bib","creationDate":"2020-01-10T22:08:56.830Z","downloads":0,"keywords":["data analysis;learning (artificial intelligence);pattern classification;social networking (online);multimodal detection;fake social media;misinformation;content analysis problem;machine learning tools;pairwise ranking approach;classification system;multimedia content;twitter;feature extraction;training;multimedia communication;twitter;transform coding;fake multimedia detection;learning to rank"],"search_terms":["multimodal","detection","fake","social","media","use","through","fusion","classification","pairwise","ranking","systems","agrawal","gupta","narayanan"],"title":"Multimodal detection of fake social media use through a fusion of classification and pairwise ranking systems","year":2017,"dataSources":["2MNbFYjMYTD6z7ExY","P3nQrSLkFzGGSmKJQ","Reikhy6EiDXFTcuR9","uP2aT6Qs8sfZJ6s8b"]}