Computer Aided Verification
Author(s) -
Gerhard Goos,
Jan Van Leeuwen,
Rajeev Alur,
Thomas A. Henzinger,
Thomas Alur,
Luca Aceto,
Jens Andersen,
Eugène Asarin,
Paul C. Attie,
F Bmarin,
Christopher B. Barrett,
Twan Basten,
Ilan Beer,
Hanêne BenAbdallah,
Shalev Ben-David,
Stuart Berezin,
K Bern- Steih,
Bernard S. Bloom,
Bernard Boigelot,
D. Bosscher,
Ahmed Bouajjani,
Richard Bryant,
Nils Buhrke,
S.-T Cheng,
ChaoLiang Chou,
Delphine H. Clarke,
David Cyrluk,
Dennis Dams,
Stephen Dawson,
Z Dayar,
Scott V. Edwards,
Cindy Eisner,
K Engelhardt,
Javier Esparza,
Amy Felty,
J. C. Fernandez,
T Per- Nando,
Michael Fisher,
Wan Fokkink,
Nissim Francez,
Hubert Garavel,
T Gelsema,
Rob Gerth,
D Giest,
Patrice Godefroid,
Scott Graf,
Désirée Huberta Griffioen,
E Gukovski,
Pirmin E. Habermehl,
Nicolas Halbwachs,
W.H.A. Hesselink,
MoonHo Ringo Ho,
Ramin Hojati,
Gerard J. Holzmann,
Anping Hu,
Hans Hüttel,
A Ngolfsdottir,
C Ip,
Alan Isles,
Sridhar Iyer,
Bonnie F. Jacobs,
Hanne Jensen,
Marc Kaltenbach,
S. D. Katz,
Alain Kerbrat,
Josva Kleist,
Sanjay Krishnan,
K. Kristoffersen,
K Kuehnle,
Yoshiaki Kukimoto,
Yassine Lakhnech,
Avner Landver,
Kathy Laster,
David Lee,
Helmut Lescow,
A.P. Levin,
X Liu,
Shugang Ma,
Oded Maler,
Florence Maraninchi,
Erich Mikk,
Heinrich Miller,
Faron Moller,
L. Mounier,
Madhavan Mukund,
Kedar S. Namjoshi,
V. Natarajan,
Damian Niwiński,
Sophie Park,
Carsta Petersohn,
Anna Philippou,
Indra Polak,
A. Ponse,
Carlos Puchol,
S Rqamani,
Y. S. Ramakrishna,
R. Ramanujam,
Rajeev Ranjan,
Peter A. Raymond,
Arend Rensink,
J. Romijn,
H Rueb,
J. Sanghavi,
Ina Schiering,
Roberto Segala,
Sebastian Seibert,
Natarajan Balaji Shankar,
Thomas R. Shiple,
V. Singhal,
Arne Skou,
Oleg Sokolsky,
Jan Springintveld,
R Staerk,
M.G. Staskauskas,
Frank Stomp,
Karl A. Stroetmann,
Robert W. Sumners,
Kim Sunesen,
Ganesh Swamy,
Serdar Taşiran,
P. S. Thiagarajan,
R Trailer,
Jan Tretmans,
Stavros Tripakis,
Shmuel Ur,
Arie van Deursen,
Marinus van Hulst,
Björn Victor,
Tomás G. Villa,
J Voege,
Theo Vos,
Igor Walukiewicz,
P Weidmann,
H Wupper,
Yang Chen,
Mihalis Yannakakis
Publication year - 1996
Publication title -
lecture notes in computer science
Language(s) - English
Resource type - Book series
SCImago Journal Rank - 0.249
H-Index - 400
eISSN - 1611-3349
pISSN - 0302-9743
DOI - 10.1007/3-540-61474-5
Subject(s) - computer science , library science , software engineering
Fueled by massive amounts of data, models produced by machine-learning (ML) algorithms, especially deep neural networks, are being used in diverse domains where trustworthiness is a concern, including automotive systems, finance, health care, natural language processing, and malware detection. Of particular concern is the use of ML algorithms in cyber-physical systems (CPS), such as self-driving cars and aviation, where an adversary can cause serious consequences. However, existing approaches to generating adversarial examples and devising robust ML algorithms mostly ignore the semantics and context of the overall system containing the ML component. For example, in an autonomous vehicle using deep learning for perception, not every adversarial example for the neural network might lead to a harmful consequence. Moreover, one may want to prioritize the search for adversarial examples towards those that significantly modify the desired semantics of the overall system. Along the same lines, existing algorithms for constructing robust ML algorithms ignore the specification of the overall system. In this paper, we argue that the semantics and specification of the overall system has a crucial role to play in this line of research. We present preliminary research results that support this claim.
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