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Institution

Facebook

CompanyTel Aviv, Israel
About: Facebook is a company organization based out in Tel Aviv, Israel. It is known for research contribution in the topics: Artificial neural network & Language model. The organization has 7856 authors who have published 10906 publications receiving 570123 citations. The organization is also known as: facebook.com & FB.


Papers
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Proceedings ArticleDOI
18 May 2014
TL;DR: This work has designed and implemented a method to detect the occurrence of SSL man-in-the-middle attack on a top global website, Facebook, and indicates that 0.2% of the SSL connections analyzed were tampered with forged SSL certificates.
Abstract: The SSL man-in-the-middle attack uses forged SSL certificates to intercept encrypted connections between clients and servers. However, due to a lack of reliable indicators, it is still unclear how commonplace these attacks occur in the wild. In this work, we have designed and implemented a method to detect the occurrence of SSL man-in-the-middle attack on a top global website, Facebook. Over 3 million real-world SSL connections to this website were analyzed. Our results indicate that 0.2% of the SSL connections analyzed were tampered with forged SSL certificates, most of them related to antivirus software and corporate-scale content filters. We have also identified some SSL connections intercepted by malware. Limitations of the method and possible defenses to such attacks are also discussed.

151 citations

Patent
Raghotham Murthy1, Rajat Goel1
19 Dec 2013
TL;DR: In this article, the authors present a low-latency database query processing system consisting of a gateway server and a plurality of worker nodes, where the gateway server is configured to divide a database query, for a database containing data stored in a distributed storage cluster having a plurality-of-data nodes, into partial queries and construct a query result based on the plurality of intermediate results.
Abstract: Techniques for a system capable of performing low-latency database query processing are disclosed herein. The system includes a gateway server and a plurality of worker nodes. The gateway server is configured to divide a database query, for a database containing data stored in a distributed storage cluster having a plurality of data nodes, into a plurality of partial queries and construct a query result based on a plurality of intermediate results. Each worker node of the plurality of worker nodes is configured to process a respective partial query of the plurality of partial queries by scanning data related to the respective partial query that stored on at least one data node of the distributed storage cluster and generate an intermediate result of the plurality of intermediate results that is stored in a memory of that worker node.

151 citations

Proceedings ArticleDOI
01 Jun 2019
TL;DR: A model-agnostic framework is proposed that trains a model to not only answer a question, but also generate a question conditioned on the answer, such that the answer predicted for the generated question is the same as the ground truth answer to the original question.
Abstract: Despite significant progress in Visual Question Answer-ing over the years, robustness of today’s VQA models leave much to be desired. We introduce a new evaluation protocol and associated dataset (VQA-Rephrasings) and show that state-of-the-art VQA models are notoriously brittle to linguistic variations in questions. VQA-Rephrasings contains 3 human-provided rephrasings for 40k questions-image pairs from the VQA v2.0 validation dataset. As a step towards improving robustness of VQA models, we propose a model-agnostic framework that exploits cycle consistency. Specifically, we train a model to not only answer a question, but also generate a question conditioned on the answer, such that the answer predicted for the generated question is the same as the ground truth answer to the original question. Without the use of additional supervision, we show that our approach is significantly more robust to linguistic variations than state-of-the-art VQA models, when evaluated on the VQA-Rephrasings dataset. In addition, our approach also outperforms state-of-the-art approaches on the standard VQA and Visual Question Generation tasks on the challenging VQA v2.0 dataset. Code and models will be made publicly available.

151 citations

Posted Content
TL;DR: It is shown that optimizing for cross-modal discrimination, rather than within-modAL discrimination, is important to learn good representations from video and audio, and this self-supervised learning approach achieves highly competitive performance when finetuned on action recognition tasks.
Abstract: We present a self-supervised learning approach to learn audio-visual representations from video and audio. Our method uses contrastive learning for cross-modal discrimination of video from audio and vice versa. We show that optimizing for cross-modal discrimination, rather than within-modal discrimination, is important to learn good representations from video and audio. With this simple but powerful insight, our method achieves state-of-the-art results when finetuned on action recognition tasks. While recent work in contrastive learning defines positive and negative samples as individual instances, we generalize this definition by exploring cross-modal agreement. We group together multiple instances as positives by measuring their similarity in both the video and the audio feature spaces. Cross-modal agreement creates better positive and negative sets, and allows us to calibrate visual similarities by seeking within-modal discrimination of positive instances.

151 citations

Proceedings ArticleDOI
Jiezhong Qiu1, Yuxiao Dong2, Hao Ma3, Jian Li1, Chi Wang2, Kuansan Wang2, Jie Tang1 
13 May 2019
TL;DR: NetSMF as mentioned in this paper leverages theories from spectral sparsification to efficiently sparsify the aforementioned dense matrix, enabling significantly improved efficiency in embedding learning, which helps maintain the representation power of the learned embeddings.
Abstract: We study the problem of large-scale network embedding, which aims to learn latent representations for network mining applications. Previous research shows that 1) popular network embedding benchmarks, such as DeepWalk, are in essence implicitly factorizing a matrix with a closed form, and 2) the explicit factorization of such matrix generates more powerful embeddings than existing methods. However, directly constructing and factorizing this matrix-which is dense-is prohibitively expensive in terms of both time and space, making it not scalable for large networks. In this work, we present the algorithm of large-scale network embedding as sparse matrix factorization (NetSMF). NetSMF leverages theories from spectral sparsification to efficiently sparsify the aforementioned dense matrix, enabling significantly improved efficiency in embedding learning. The sparsified matrix is spectrally close to the original dense one with a theoretically bounded approximation error, which helps maintain the representation power of the learned embeddings. We conduct experiments on networks of various scales and types. Results show that among both popular benchmarks and factorization based methods, NetSMF is the only method that achieves both high efficiency and effectiveness. We show that NetSMF requires only 24 hours to generate effective embeddings for a large-scale academic collaboration network with tens of millions of nodes, while it would cost DeepWalk months and is computationally infeasible for the dense matrix factorization solution. The source code of NetSMF is publicly available1.

150 citations


Authors

Showing all 7875 results

NameH-indexPapersCitations
Yoshua Bengio2021033420313
Xiang Zhang1541733117576
Jitendra Malik151493165087
Trevor Darrell148678181113
Christopher D. Manning138499147595
Robert W. Heath128104973171
Pieter Abbeel12658970911
Yann LeCun121369171211
Li Fei-Fei120420145574
Jon Kleinberg11744487865
Sergey Levine11565259769
Richard Szeliski11335972019
Sanjeev Kumar113132554386
Bruce Neal10856187213
Larry S. Davis10769349714
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Performance
Metrics
No. of papers from the Institution in previous years
YearPapers
20241
202237
20211,738
20202,017
20191,607
20181,229