Risks and potentials of using EMV for internet payments
Els van Herreweghen, Uta Wille
USENIX Workshop on Smartcard Technology 1999
We study the properties of the agnostic learning framework of Haussler (1992) and Kearns, Schapire, and Sellie (1994). In particular, we address the question: is there any situation in which member-ship queries are useful in agnostic learning? Our results show that the answer is negative for distribution-independent agnostic learning and positive for agnostic learning with respect to a specific marginal distribution. Namely, we give a simple proof that any concept class learnable agnostically by a distribution-independent algorithm with access to membership queries is also learnable agnostically without membership queries. This resolves an open problem posed by Kearns et al. (1994). For agnostic learning with respect to the uniform distribution over {0,1} n we show a concept class that is learnable with membership queries but computationally hard to learn from random examples alone (assuming that one-way functions exist).
Els van Herreweghen, Uta Wille
USENIX Workshop on Smartcard Technology 1999
Jungo Kasai, Kun Qian, et al.
ACL 2019
David W. Jacobs, Daphna Weinshall, et al.
IEEE Transactions on Pattern Analysis and Machine Intelligence
Rocco Langone, Carlos Alzate, et al.
SSCI 2013