Model Extraction Warning in MLaaS Paradigm
نویسندگان
چکیده
Cloud vendors are increasingly offering machine learning services as part of their platform and services portfolios. These services enable the deployment of machine learning models on the cloud that are offered on a pay-per-query basis to application developers and end users. However recent work has shown that the hosted models are susceptible to extraction attacks. Adversaries may launch queries to steal the model and compromise future query payments or privacy of the training data. In this work, we present a cloudbased extraction monitor that can quantify the extraction status of models by observing the query and response streams of both individual and colluding adversarial users. We present a novel technique that uses information gain to measure the model learning rate by users with increasing number of queries. Additionally, we present an alternate technique that maintains intelligent query summaries to measure the learning rate relative to the coverage of the input feature space in the presence of collusion. Both these approaches have low computational overhead and can easily be offered as services to model owners to warn them of possible extraction attacks from adversaries. We present performance results for these approaches for decision tree models deployed on BigML MLaaS platform, using open source datasets and different adversarial attack strategies.
منابع مشابه
Transcendent Medicine and Deep Medicine Paradigm
Background: Very recently, Eric Topol, a physician-scientist, introduced his “deep medicine” theory in 2019. This theory has been originated from the last two decades advancements of systems medicine and digital medicine, science and technology convergence in biological fields and formation of the precision medicine. The transcendent medicine theory that has been derived from Sadr ad-Din Shiraz...
متن کاملA Framework of MLaaS for Facilitating Adaptive Micro Learning through Open Education Resources in Mobile Environment
Microlearningbecomespopularinonlineopenlearninganditiseffectiveandhelpfulforlearningin mobileenvironment.However,thedeliveryofopeneducationresources(OERs)isscarcelysupported bythecurrentonlinesystems.Inthisresearch,theauthorsintroduceanapproachtobridgethegap byprovidingadaptivemicroopeneducationresourcesforindividuallearnerstocarryoutl...
متن کاملTowards Massive Data and Sparse Data in Adaptive Micro Open Educational Resource Recommendation: A Study on Semantic Knowledge Base Construction and Cold Start Problem
Micro Learning through open educational resources (OERs) is becoming increasingly popular. However, adaptive micro learning support remains inadequate by current OER platforms. To address this, our smart system, Micro Learning as a Service (MLaaS), aims to deliver personalized OER with micro learning to satisfy their real-time needs. In this paper, we focus on constructing a knowledge base to s...
متن کاملA discriminated conditioned punishment model of phobia
Traditionally, the signaled avoidance (SA) paradigm has been used in an attempt to better understand human phobia. Animal models of this type have been criticized for ineffectively representing phobia. The SA model characterizes phobia as an avoidance behavior by presenting environmental cues, which act as warning signals to an aversive stimulus (ie, shock). Discriminated conditioned punishment...
متن کاملNoospheric Psychological-Educational Paradigm as a Methodological Basis for Teaching Russian-Language Business Communication to Foreign Students
In the context of the polyparadigmatic system of higher education, the noospheric psychological-pedagogical paradigm is considered, on its basis a lingvodidactic model is developed for the formation of professional-communicative competence (PCC) in Russian-language business communication among foreign students. The research focuses on the basic principles of the noospheric paradigm, which procl...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- CoRR
دوره abs/1711.07221 شماره
صفحات -
تاریخ انتشار 2017