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UID:658@lincs.fr
DTSTART;TZID=Europe/Paris:20210921T140000
DTEND;TZID=Europe/Paris:20210921T170000
DTSTAMP:20210921T104819Z
URL:https://www.lincs.fr/events/longitudinal-large-scale-and-unbiased-inte
 rnet-measurements/
SUMMARY:PhD thesis defense "Longitudinal\, large scale and unbiased
 Internet Measurements"
DESCRIPTION:Today\, a world without the Internet is unimaginable. By
 interconnecting billions of people worldwide and by offering an uncountable
 number of services\, it is now fully embedded in the modern society. Yet\,
 despite technology evolution and development\, its pervasiveness and
 heterogeneity still raise new challenges\, such as security concerns\,
 monitoring of the users' Quality of Experience (QoE)\, care for
 transparency and fairness. Accordingly\, the goal of this thesis is to shed
 new light on some of the challenges emerged in recent years. In
 particular\, we provide an in-depth analysis of some of the most prominent
 aspects of modern Internet. A particular emphasis is given on the World
 Wide Web\, which among all\, is undoubtedly one of the most popular
 Internet applications\, and a specific regard to its interaction with
 machine learning. The first part of this work studies the Quality of
 Experience of users' browsing the Web\, with measurements led both in the
 wild and in controlled environments. Our contributions follow with an
 original analysis of both the subjective user feedback and the objective
 QoE metrics\, showing how hard it is to build accurate supervised
 data-driven models capable to predict the user satisfaction\, along with an
 in-depth discussion of the multi-modal nature of the subjective user
 opinions.In the second part of this work\, we analyze and discuss the
 fairness of state-of-the-art transformer-based language models\, which are
 pre-trained on Web-based corpora and which are typically used to solve a
 wide variety of Natural Language Processing (NLP) tasks. Here\, we question
 whether the sheer size and heterogeneity of the Web guarantee diversity in
 the models. The core of our contributions rests in the measure of the bias
 embedded in the models\, that we discuss under different angles. Finally\,
 the last part of this dissertation addresses the classification of objects
 generated by machines through some of the simplest state-of-the-art
 supervised machine learning algorithms. Through a minimally intrusive\,
 robust and lightweight framework\, we show that the different behaviors of
 a field of the IP packet\, the IP identification (IP-ID)\, could be easily
 classified with few features having high discriminative power. We finally
 apply our technique to an Internet-wide census and provide an updated view
 of the adoption of the different implementations in the
 Internet.\n\n&nbsp\;\nJury composition:\nIsabelle CHRISMENT\, Professor\,
 LORIA Campus Scientifique (President\, Reviewer)\nPedro CASAS\, Senior
 Scientist\, AIT Austrian Institute Of Technology (Reviewer)\nChadi
 BARAKAT\, Senior Researcher\, INRIA (Examinator)\nTobias HOßFELD\,
 Professor\, University of Würzburg(Examinator)\nMarco MELLIA\, Professor\,
 Politecnico di Torino (Examinator)\nPhilippe OWEZARSKI\, Director of
 Research\, LAAS-CNRS (Examinator)\n&nbsp\;\nMauro SOZIO\, Professeur\,
 Télécom Paris (PhD Supervisor)\nDario ROSSI\, Chief Expert\, Huawei
 Technologies France (PhD Co-Supervisor)\n&nbsp\;\nTo watch the
 defense:\nhttps://telecom-paris.zoom.us/j/94526858841?pwd=Y3Yzbjg4UTVzMFhIU
 HFwNG5wNmR4QT09&nbsp\;&nbsp\;\n\nID de réunion : 945 2685
 8841&nbsp\;\nCode secret : &nbsp\;340704\n
CATEGORIES:PhD Defense
LOCATION:Zoom + Amphi 4 chez Télécom-Paris\, 19 Place Marguerite Perey\,
 Palaiseau\,  91120\, France
X-APPLE-STRUCTURED-LOCATION;VALUE=URI;X-ADDRESS=19 Place Marguerite Perey\,
 Palaiseau\,  91120\, France;X-APPLE-RADIUS=100;X-TITLE=Zoom + Amphi 4 chez
 Télécom-Paris:geo:0,0
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TZID:Europe/Paris
X-LIC-LOCATION:Europe/Paris
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DTSTART:20210328T030000
TZOFFSETFROM:+0100
TZOFFSETTO:+0200
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