Search Results for author: A. Ercument Cicek

Found 4 papers, 4 papers with code

SplitOut: Out-of-the-Box Training-Hijacking Detection in Split Learning via Outlier Detection

1 code implementation16 Feb 2023 Ege Erdogan, Unat Teksen, Mehmet Salih Celiktenyildiz, Alptekin Kupcu, A. Ercument Cicek

Split learning enables efficient and privacy-aware training of a deep neural network by splitting a neural network so that the clients (data holders) compute the first layers and only share the intermediate output with the central compute-heavy server.

Outlier Detection

UnSplit: Data-Oblivious Model Inversion, Model Stealing, and Label Inference Attacks Against Split Learning

1 code implementation20 Aug 2021 Ege Erdogan, Alptekin Kupcu, A. Ercument Cicek

(1) We show that an honest-but-curious split learning server, equipped only with the knowledge of the client neural network architecture, can recover the input samples and obtain a functionally similar model to the client model, without being detected.

SplitGuard: Detecting and Mitigating Training-Hijacking Attacks in Split Learning

1 code implementation20 Aug 2021 Ege Erdogan, Alptekin Kupcu, A. Ercument Cicek

Distributed deep learning frameworks such as split learning provide great benefits with regards to the computational cost of training deep neural networks and the privacy-aware utilization of the collective data of a group of data-holders.

Apollo: A Sequencing-Technology-Independent, Scalable, and Accurate Assembly Polishing Algorithm

1 code implementation12 Feb 2019 Can Firtina, Jeremie S. Kim, Mohammed Alser, Damla Senol Cali, A. Ercument Cicek, Can Alkan, Onur Mutlu

Our experiments with real read sets demonstrate that Apollo is the only algorithm that 1) uses reads from any sequencing technology within a single run and 2) scales well to polish large assemblies without splitting the assembly into multiple parts.

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