scispace - formally typeset
Search or ask a question
Institution

Microsoft

CompanyRedmond, Washington, United States
About: Microsoft is a company organization based out in Redmond, Washington, United States. It is known for research contribution in the topics: User interface & Context (language use). The organization has 49501 authors who have published 86900 publications receiving 4195429 citations. The organization is also known as: MS & MSFT.


Papers
More filters
Journal ArticleDOI
TL;DR: This article identifies key challenges facing optimistic replication systems---ordering operations, detecting and resolving conflicts, propagating changes efficiently, and bounding replica divergence---and provides a comprehensive survey of techniques developed for addressing these challenges.
Abstract: Data replication is a key technology in distributed systems that enables higher availability and performance. This article surveys optimistic replication algorithms. They allow replica contents to diverge in the short term to support concurrent work practices and tolerate failures in low-quality communication links. The importance of such techniques is increasing as collaboration through wide-area and mobile networks becomes popular.Optimistic replication deploys algorithms not seen in traditional “pessimistic” systems. Instead of synchronous replica coordination, an optimistic algorithm propagates changes in the background, discovers conflicts after they happen, and reaches agreement on the final contents incrementally.We explore the solution space for optimistic replication algorithms. This article identifies key challenges facing optimistic replication systems---ordering operations, detecting and resolving conflicts, propagating changes efficiently, and bounding replica divergence---and provides a comprehensive survey of techniques developed for addressing these challenges.

733 citations

Journal ArticleDOI
John Krumm1
01 Aug 2009
TL;DR: This is a literature survey of computational location privacy, meaning computation-based privacy mechanisms that treat location data as geometric information, which includes privacy-preserving algorithms like anonymity and obfuscation as well as privacy-breaking algorithms that exploit the geometric nature of the data.
Abstract: This is a literature survey of computational location privacy, meaning computation-based privacy mechanisms that treat location data as geometric information. This definition includes privacy-preserving algorithms like anonymity and obfuscation as well as privacy-breaking algorithms that exploit the geometric nature of the data. The survey omits non-computational techniques like manually inspecting geotagged photos, and it omits techniques like encryption or access control that treat location data as general symbols. The paper reviews studies of peoples' attitudes about location privacy, computational threats on leaked location data, and computational countermeasures for mitigating these threats.

732 citations

Proceedings ArticleDOI
01 Nov 2016
TL;DR: The authors proposed a deep memory network for aspect level sentiment classification, which explicitly captures the importance of each context word when inferring the sentiment polarity of an aspect, such importance degree and text representation are calculated with multiple computational layers, each of which is a neural attention model over an external memory.
Abstract: We introduce a deep memory network for aspect level sentiment classification. Unlike feature-based SVM and sequential neural models such as LSTM, this approach explicitly captures the importance of each context word when inferring the sentiment polarity of an aspect. Such importance degree and text representation are calculated with multiple computational layers, each of which is a neural attention model over an external memory. Experiments on laptop and restaurant datasets demonstrate that our approach performs comparable to state-of-art feature based SVM system, and substantially better than LSTM and attention-based LSTM architectures. On both datasets we show that multiple computational layers could improve the performance. Moreover, our approach is also fast. The deep memory network with 9 layers is 15 times faster than LSTM with a CPU implementation.

731 citations

Journal ArticleDOI
Lin Liang1, Ce Liu1, Ying-Qing Xu1, Baining Guo1, Heung-Yeung Shum1 
TL;DR: An algorithm for synthesizing textures from an input sample by sampling patches according to a nonparametric estimation of the local conditional MRF density function, to avoid mismatching features across patch boundaries.
Abstract: We present an algorithm for synthesizing textures from an input sample. This patch-based sampling algorithm is fast and it makes high-quality texture synthesis a real-time process. For generating textures of the same size and comparable quality, patch-based sampling is orders of magnitude faster than existing algorithms. The patch-based sampling algorithm works well for a wide variety of textures ranging from regular to stochastic. By sampling patches according to a nonparametric estimation of the local conditional MRF density function, we avoid mismatching features across patch boundaries. We also experimented with documented cases for which pixel-based nonparametric sampling algorithms cease to be effective but our algorithm continues to work well.

731 citations

Proceedings ArticleDOI
01 Nov 2000
TL;DR: This work introduces and integrates a set of sensors into a handheld device, and demonstrates several new functionalities engendered by the sensors, such as recording memos when the device is held like a cell phone, switching between portrait and landscape display modes by holding the device in the desired orientation.
Abstract: We describe sensing techniques motivated by unique aspects of human-computer interaction with handheld devices in mobile settings. Special features of mobile interaction include changing orientation and position, changing venues, the use of computing as auxiliary to ongoing, real-world activities like talking to a colleague, and the general intimacy of use for such devices. We introduce and integrate a set of sensors into a handheld device, and demonstrate several new functionalities engendered by the sensors, such as recording memos when the device is held like a cell phone, switching between portrait and landscape display modes by holding the device in the desired orientation, automatically powering up the device when the user picks it up the device to start using it, and scrolling the display using tilt. We present an informal experiment, initial usability testing results, and user reactions to these techniques.

729 citations


Authors

Showing all 49603 results

NameH-indexPapersCitations
P. Chang1702154151783
Andrew Zisserman167808261717
Alexander S. Szalay166936145745
Darien Wood1602174136596
Xiang Zhang1541733117576
Vivek Sharma1503030136228
Rajesh Kumar1494439140830
Bernhard Schölkopf1481092149492
Thomas S. Huang1461299101564
Christopher D. Manning138499147595
Nicolas Berger137158196529
Georgios B. Giannakis137132173517
Luc Van Gool1331307107743
Eric Horvitz13391466162
Xiaoou Tang13255394555
Network Information
Related Institutions (5)
Google
39.8K papers, 2.1M citations

98% related

Facebook
10.9K papers, 570.1K citations

96% related

AT&T Labs
5.5K papers, 483.1K citations

94% related

Carnegie Mellon University
104.3K papers, 5.9M citations

93% related

Performance
Metrics
No. of papers from the Institution in previous years
YearPapers
202312
2022168
20213,509
20204,696
20194,319
20184,135