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https://phd.dii.unipi.it/pubblicazioni/item/1744-cresci,-s-,-la-polla,-m-,-and-tesconi,-m-2017-il-fenomeno-dei-fake-follower-in-twitter-in-andretta,-m-,-and-bracciale,-r-,-eds-,-social-media-campaigning-le-elezioni-regionali-in-toscana2015,-141-162-pisa-university-press.html
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https://phd.dii.unipi.it/pubblicazioni/item/1743-cresci,-s-,-del-vigna,-f-,-and-tesconi,-m-2017-i-big-data-nella-ricerca-politica-e-sociale-in-andretta,-m-,-and-bracciale,-r-,-eds-,-social-media-campaigning-le-elezioni-regionali-in-toscana2015,-113-140-pisa-university-press.html
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https://phd.dii.unipi.it/pubblicazioni/item/1742-cresci,-s-,-di-pietro,-r-,-petrocchi,-m-,-spognardi,-a-,-and-tesconi,-m-2017,-april-the-paradigm-shift-of-social-spambots-evidence,-theories,-and-tools-for-the-arms-race-www-companion-2017-acm.html
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https://phd.dii.unipi.it/pubblicazioni/item/1741-avvenuti,-m-,-bellomo,-s-,-cresci,-s-,-la-polla,-m-n-,-and-tesconi,-m-2017,-april-hybrid-crowdsensing-a-novel-paradigm-to-combine-the-strengths-of-opportunistic-and-participatory-crowdsensing-www-companion-2017-acm.html
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https://phd.dii.unipi.it/pubblicazioni/item/1740-cresci,-s-,-di-pietro,-r-,-petrocchi,-m-,-spognardi,-a-,-and-tesconi,-m-2017,-october-exploiting-digital-dna-for-the-analysis-of-similarities-in-twitter-behaviours-4th-ieee-international-conference-on-data-science-and-advanced-analytics-ieee.html
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https://phd.dii.unipi.it/pubblicazioni/item/1739-vadicamo,-l-,-carrara,-f-,-falchi,-f-,-cresci,-s-,-tesconi,-m-,-cimino,-a-,-and-dell’orletta,-f-2017,-october-cross-media-learning-for-image-sentiment-analysis-in-the-wild-2017-ieee-international-conference-on-computer-vision-workshops-ieee.html
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https://phd.dii.unipi.it/pubblicazioni/item/1738-avvenuti,-m-,-cresci,-s-,-del-vigna,-f-,-and-tesconi,-m-2017-on-the-need-of-opening-up-crowdsourced-emergency-management-systems-ai-society,-1-6-springer.html
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https://phd.dii.unipi.it/pubblicazioni/item/1737-cresci,-s-,-avvenuti,-m-,-la-polla,-m-,-meletti,-c-,-and-tesconi,-m-2017-nowcasting-of-earthquake-consequences-using-big-social-data-ieee-internet-computing-ieee.html
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https://phd.dii.unipi.it/pubblicazioni/item/1736-cresci,-s-,-di-pietro,-r-,-petrocchi,-m-,-spognardi,-a-,-and-tesconi,-m-2017-social-fingerprinting-detection-of-spambot-groups-through-dna-inspired-behavioral-modeling-ieee-transactions-on-dependable-and-secure-computing-ieee.html
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https://phd.dii.unipi.it/pubblicazioni/item/1313-marco-avvenuti,-stefano-cresci,-andrea-marchetti,-carlo-meletti,-maurizio-tesconi,-predictability-or-early-warning-using-social-media-in-modern-emergency-response-,-ieee-internet-computing-20-6-4-6,-2016.html
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The advent of online social networks (OSNs) paired with the ubiquitous proliferation of smartphones have enabled social sensing systems. In the last few years, the aptitude of humans to spontaneously collect and timely share context information has been...
https://phd.dii.unipi.it/pubblicazioni/item/1240-avvenuti,-m-,-cimino,-m-g-,-cresci,-s-,-marchetti,-a-,-tesconi,-m-2016-a-framework-for-detecting-unfolding-emergencies-using-humans-as-sensors-springerplus,-5-1-,-1,-springer.html
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A novel approach to modeling online user behavior extracts and analyzes digital DNA-inspired sequences from users’ online actions. Standard DNA analysis techniques can then discriminate between genuine and spambot accounts.
https://phd.dii.unipi.it/pubblicazioni/item/1239-cresci,-s-,-di-pietro,-r-,-petrocchi,-m-,-spognardi,-a-,-tesconi,-m-2016-dna-inspired-online-behavioral-modeling-and-its-application-to-spambot-detection-ieee-intelligent-systems,-31-5-,-58-64,-ieee.html
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Inspired by biological DNA, we model the behaviour of online users as “Digital DNA” sequences, introducing a strikingly novel, simple, and effective approach to discriminate between genuine and spambot online accounts.
https://phd.dii.unipi.it/pubblicazioni/item/1238-cresci,-s-,-di-pietro,-r-,-petrocchi,-m-,-spognardi,-a-,-tesconi,-m-2016-social-fingerprinting-or-the-truth-about-you-ercim-news,-106,-26-27,-ercim.html
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Fake followers are those Twitter accounts specifically created to inflate the number of followers of a target account. Fake followers are dangerous for the social platform and beyond, since they may alter concepts like popularity and influence in the...
https://phd.dii.unipi.it/pubblicazioni/item/1237-cresci,-s-,-di-pietro,-r-,-petrocchi,-m-,-spognardi,-a-,-tesconi,-m-2015-fame-for-sale-efficient-detection-of-fake-twitter-followers-decision-support-systems,-80,-56-71,-elsevier.html
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To visualize post-emergency damage, a crisis-mapping system uses readily available semantic annotators, a machine-learning classifier to analyze relevant tweets, and interactive maps to rank extracted situational information. The system was validated...
https://phd.dii.unipi.it/pubblicazioni/item/935-avvenuti,-m-,-cresci,-s-,-del-vigna,-f-,-tesconi,-m-2016-impromptu-crisis-mapping-to-prioritize-emergency-response-computer,-49-5-,-28-37.html
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Social media have become a primary communication channel among people and are continuously overwhelmed by huge volumes of User Generated Content. This is especially true in the aftermath of unpredictable disasters, when users report facts, descriptions...
https://phd.dii.unipi.it/pubblicazioni/item/589-marco-avvenuti,-fabio-del-vigna,-stefano-cresci,-andrea-marchetti,-maurizio-tesconi,-pulling-information-from-social-media-in-the-aftermath-of-unpredictable-disasters-,-2015-2nd-international-conference-on-information-and-communication-technologies.html
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Recent disasters demonstrated the central role of social media during emergencies thus motivating the exploitation of such data for crisis mapping. We propose a crisis mapping system that addresses limitations of current state-of-the-art approaches by...
https://phd.dii.unipi.it/pubblicazioni/item/588-stefano-cresci,-andrea-cimino,-felice-dell-orletta,-maurizio-tesconi,-crisis-mapping-during-natural-disasters-via-text-analysis-of-social-media-messages-,-web-information-systems-engineering–wise-2015.html
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This work focuses on the analysis of Italian social media messages for disaster management and aims at the detection of messages carrying critical information for the damage assessment task. A main novelty of this study consists in the focus on...
https://phd.dii.unipi.it/pubblicazioni/item/398-http-www-iit-cnr-it-sites-default-files-cresci,-202015,-20a-20linguistically-driven-20approach-20to-20cross-event-20damage-20assessment-20of-20natural-20disasters-20from-20social-20media-20messages-pdf.html
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In this paper we describe our approach to EVALITA 2014 SENTIment POLarity Classification (SENTIPOLC) task. We participated only in the Polarity Classification subtask. By resorting to a wide set of general–purpose features qualifying the lexical and...
https://phd.dii.unipi.it/pubblicazioni/item/314-10-12871-clicit2014214.html