来自 Google 官方博客，为省却大家找梯子之苦，全文转贴在此。
by Corinna Cortes and Alfred Spector, Google Research
整个 Google 公司的员工都积极地通过出版技术论文、贡献开源软件、制定标准、引入新的 API 和工具、发表演讲、参与技术讨论等等工作融入社区。我们的论文会讲述技术和算法上面的进展，阐述我们在开发新产品和服务时获得的见解，说明 Google 面临的一些技术挑战。以下是 2013 年 Google 员工撰写和合作撰写的最有影响里的论文。未来几周，我们将更深入地探讨其中的一些。
Online Matching and Ad Allocation（在线匹配与广告分配）， by Aranyak Mehta [Foundations and Trends in Theoretical Computer Science]
Fast, Accurate Detection of 100,000 Object Classes on a Single Machine, by Thomas Dean, Mark Ruzon, Mark Segal, Jonathon Shlens, Sudheendra Vijayanarasimhan, Jay Yagnik [Proceedings of IEEE Conference on Computer Vision and Pattern Recognition]
In this paper, we show how to use hash table lookups to replace the dot products in a convolutional filter bank with the number of lookups independent of the number of filters. We apply the technique to evaluate 100,000 deformable-part models requiring over a million (part) filters on multiple scales of a target image in less than 20 seconds using a single multi-core processor with 20GB of RAM.
Photon: Fault-tolerant and Scalable Joining of Continuous Data Streams, by Rajagopal Ananthanarayanan, Venkatesh Basker, Sumit Das, Ashish Gupta, Haifeng Jiang, Tianhao Qiu, Alexey Reznichenko, Deomid Ryabkov， Manpreet Singh, Shivakumar Venkataraman [SIGMOD]
In this paper, we talk about Photon, a geographically distributed system for joining multiple continuously flowing streams of data in real-time with high scalability and low latency. The streams may be unordered or delayed. Photon fully tolerates infrastructure degradation and datacenter-level outages without any manual intervention while joining every event exactly once. Photon is currently deployed in production, processing millions of events per minute at peak with an average end-to-end latency of less than 10 seconds.
Omega: flexible, scalable schedulers for large compute clusters, by Malte Schwarzkopf, Andy Konwinski, Michael Abd-El-Malek, John Wilkes [SIGOPS European Conference on Computer Systems (EuroSys)]
Omega addresses the need for increasing scale and speed in cluster schedulers using parallelism, shared state, and lock-free optimistic concurrency control. The paper presents a taxonomy of design approaches and evaluates Omega using simulations driven by Google production workloads.
FFitts Law: Modeling Finger Touch with Fitts' Law, by Xiaojun Bi, Yang Li, Shumin Zhai [Proceedings of the SIGCHI Conference on Human Factors in Computing Systems (CHI 2013)]
Fitts’ law is a cornerstone of graphical user interface research and evaluation. It can precisely predict cursor movement time given an on screen target’s location and size. In the era of finger-touch based mobile computing world, the conventional form of Fitts’ law loses its power when the targets are often smaller than the finger width. Researchers at Google, Xiaojun Bi, Yang Li, and Shumin Zhai, devised finger Fitts’ law (FFitts law) to fix such a fundamental problem.
Top-k Publish-Subscribe for Social Annotation of News, by Alexander Shraer, Maxim Gurevich, Marcus Fontoura, Vanja Josifovski [Proceedings of the 39th International Conference on Very Large Data Bases]
The paper describes how scalable, low latency content-based publish-subscribe systems can be implemented using inverted indices and modified top-k document retrieval algorithms. The feasibility of this approach is demonstrated in the application of annotating news articles with social updates (such as Google+ posts or tweets). This application is casted as publish-subscribe, where news articles are treated as subscriptions (continuous queries) and social updates as published items with large update frequency.
Ad Click Prediction: a View from the Trenches, by H. Brendan McMahan, Gary Holt, D. Sculley， Michael Young, Dietmar Ebner, Julian Grady， Lan Nie, Todd Phillips, Eugene Davydov， Daniel Golovin, Sharat Chikkerur, Dan Liu, Martin Wattenberg, Arnar Mar Hrafnkelsson, Tom Boulos, Jeremy Kubica [KDD]
How should one go about making predictions in extremely large scale production systems? We provide a case study for ad click prediction, and illustrate best practices for combining rigorous theory with careful engineering and evaluation. The paper contains a mix of novel algorithms, practical approaches, and some surprising negative results.
Learning kernels using local rademacher complexity, by Corinna Cortes, Marius Kloft, Mehryar Mohri [Advances in Neural Information Processing Systems (NIPS 2013)]
This paper shows how the notion of local Rademacher complexity， which leads to sharp learning guarantees, can be used to derive algorithms for the important problem of learning kernels. It also reports the results of several experiments with these algorithms which yield performance improvements in some challenging tasks.
Efficient Estimation of Word Representations in Vector Space, by Tomas Mikolov， Kai Chen, Greg S. Corrado, Jeffrey Dean [ICLR Workshop 2013]
We describe a simple and speedy method for training vector representations of words. The resulting vectors naturally capture the semantics and syntax of word use, such that simple analogies can be solved with vector arithmetic. For example, the vector difference between 'man' and 'woman' is approximately equal to the difference between 'king' and 'queen'， and vector displacements between any given country's name and its capital are aligned. We provide an open source implementation as well as pre trained vector representations at http://word2vec.googlecode.com
Large-Scale Learning with Less RAM via Randomization, by Daniel Golovin, D. Sculley， H. Brendan McMahan, Michael Young [Proceedings of the 30 International Conference on Machine Learning (ICML)]
We show how a simple technique -- using limited precision coefficients and randomized rounding -- can dramatically reduce the RAM needed to train models with online convex optimization methods such as stochastic gradient descent. In addition to demonstrating excellent empirical performance, we provide strong theoretical guarantees.
Source-Side Classifier Preordering for Machine Translation, by Uri Lerner, Slav Petrov [Proc. of EMNLP '13]
When translating from one language to another, it is important to not only choose the correct translation for each word, but to also put the words in the correct word order. In this paper we present a novel approach that uses a syntactic parser and a feature-rich classifier to perform long-distance reordering. We demonstrate significant improvements over alternative approaches on a large number of language pairs.
Token and Type Constraints for Cross-Lingual Part-of-Speech Tagging, by Oscar Tackstrom, Dipanjan Das, Slav Petrov， Ryan McDonald, Joakim Nivre [Transactions of the Association for Computational Linguistics (TACL '13)]
Knowing the parts of speech (verb, noun, etc.) of words is important for many natural language processing applications, such as information extraction and machine translation. Constructing part-of-speech taggers typically requires large amounts of manually annotated data, which is missing in many languages and domains. In this paper, we introduce a method that instead relies on a combination of incomplete annotations projected from English with incomplete crowdsourced dictionaries in each target language. The result is a 25 percent error reduction compared to the previous state of the art.
Universal Dependency Annotation for Multilingual Parsing, by Ryan McDonald, Joakim Nivre, Yoav Goldberg, Yvonne Quirmbach-Brundage, Dipanjan Das, Kuzman Ganchev， Keith Hall, Slav Petrov， Hao Zhang, Oscar Tackstrom, Claudia Bedini, Nuria Bertomeu Castello, Jungmee Lee, [Association for Computational Linguistics]
This paper discusses a public release of syntactic dependency treebanks (https://code.google.com/p/uni-dep-tb/). Syntactic treebanks are manually annotated data sets containing full syntactic analysis for a large number of sentences (http://en.wikipedia.org/wiki/Dependency_grammar). Unlike other syntactic treebanks, the universal data set tries to normalize syntactic phenomena across languages when it can to produce a harmonized set of multilingual data. Such a resource will help large scale multilingual text analysis and evaluation.
B4: Experience with a Globally Deployed Software Defined WAN, by Sushant Jain, Alok Kumar, Subhasree Mandal, Joon Ong, Leon Poutievski, Arjun Singh, Subbaiah Venkata, Jim Wanderer, Junlan Zhou, Min Zhu, Jonathan Zolla, Urs Hölzle, Stephen Stuart, Amin Vahdat [Proceedings of the ACM SIGCOMM Conference]
This paper presents the motivation, design, and evaluation of B4, a Software Defined WAN for our data center to data center connectivity. We present our approach to separating the network’s control plane from the data plane to enable rapid deployment of new network control services. Our first such service, centralized traffic engineering allocates bandwidth among competing services based on application priority， dynamically shifting communication patterns, and prevailing failure conditions.
When the Cloud Goes Local: The Global Problem with Data Localization, by Patrick Ryan, Sarah Falvey， Ronak Merchant [IEEE Computer]
Ongoing efforts to legally define cloud computing and regulate separate parts of the Internet are unlikely to address underlying concerns about data security and privacy. Data localization initiatives, led primarily by European countries, could actually bring the cloud to the ground and make the Internet less secure.
Cloud-based robot grasping with the google object recognition engine, by Ben Kehoe, Akihiro Matsukawa, Sal Candido, James Kuffner, Ken Goldberg [IEEE Int’l Conf. on Robotics and Automation]
What if robots were not limited by onboard computation, algorithms did not need to be implemented on every class of robot, and model improvements from sensor data could be shared across many robots? With wireless networking and rapidly expanding cloud computing resources this possibility is rapidly becoming reality. We present a system architecture, implemented prototype, and initial experimental data for a cloud-based robot grasping system that incorporates a Willow Garage PR2 robot with onboard color and depth cameras, Google’s proprietary object recognition engine, the Point Cloud Library (PCL) for pose estimation, Columbia University’s GraspIt! toolkit and OpenRAVE for 3D grasping and our prior approach to sampling-based grasp analysis to address uncertainty in pose.
Alice in Warningland: A Large-Scale Field Study of Browser Security Warning Effectiveness, by Devdatta Akhawe, Adrienne Porter Felt [USENIX Security Symposium]
Browsers show security warnings to keep users safe. How well do these warnings work? We empirically assess the effectiveness of browser security warnings, using more than 25 million warning impressions from Google Chrome and Mozilla Firefox.
Arrival and departure dynamics in Social Networks, by Shaomei Wu, Atish Das Sarma, Alex Fabrikant, Silvio Lattanzi, Andrew Tomkins [WSDM]
In this paper, we consider the natural arrival and departure of users in a social network, and show that the dynamics of arrival, which have been studied in some depth, are quite different from the dynamics of departure, which are not as well studied. We show unexpected properties of a node's local neighborhood that are predictive of departure. We also suggest that, globally， nodes at the fringe are more likely to depart, and subsequent departures are correlated among neighboring nodes in tightly-knit communities.
All the news that's fit to read: a study of social annotations for news reading, by Chinmay Kulkarni, Ed H. Chi [In Proc. of CHI2013]
As news reading becomes more social, how do different types of annotations affect people's selection of news articles? This crowdsourcing experiment show that strangers' opinion, unsurprisingly， has no persuasive effects, while surprisingly unknown branded companies still have persuasive effects. What works best are friend annotations, helping users decide what to read, and provide social context that improves engagement.
Does Bug Prediction Support Human Developers? Findings from a Google Case Study, by Chris Lewis, Zhongpeng Lin, Caitlin Sadowski, Xiaoyan Zhu, Rong Ou, E. James Whitehead Jr. [International Conference on Software Engineering (ICSE)]
"Does Bug Prediction Support Human Developers?" was a study that investigated whether software engineers changed their code review habits when presented with information about where bug-prone code might be lurking. Much to our surprise we found out that developer behavior didn't change at all! We went on to suggest features that bug prediction algorithms need in order to fit with developer workflows, which will hopefully result in more supportive algorithms being developed in the future.
Statistical Parametric Speech Synthesis Using Deep Neural Networks, by Heiga Zen, Andrew Senior, Mike Schuster [Proceedings of the IEEE International Conference on Acoustics, Speech, and Signal Processing (ICASSP)]
Conventional approaches to statistical parametric speech synthesis use decision tree-clustered context-dependent hidden Markov models (HMMs) to represent probability densities of speech given text. This paper examines an alternative scheme in which the mapping from an input text to its acoustic realization is modeled by a deep neural network (DNN). Experimental results show that DNN-based speech synthesizers can produce more natural-sounding speech than conventional HMM-based ones using similar model sizes.
Accurate and Compact Large Vocabulary Speech Recognition on Mobile Devices, by Xin Lei, Andrew Senior, Alexander Gruenstein, Jeffrey Sorensen [Interspeech] In this paper we describe the neural network-based speech recognition system that runs in real-time on android phones. With the neural network acoustic model replacing the previous Gaussian mixture model and a compressed language model using on-the-fly rescoring, the word-error-rate is reduced by 27% while the storage requirement is reduced by 63%
Pay by the Bit: An Information-Theoretic Metric for Collective Human Judgment, by Tamsyn P. Waterhouse [Proc CSCW] There's a lot of confusion around quality control in crowdsourcing. For the broad problem subtype we call collective judgment, I discovered that information theory provides a natural and elegant metric for the value of contributors' work, in the form of the mutual information between their judgments and the questions' answers, each treated as random variables
F1: A Distributed SQL Database That Scales, by Jeff Shute, Radek Vingralek, Bart Samwel, Ben Handy， Chad Whipkey， Eric Rollins, Mircea Oancea, Kyle Littleﬁeld, David Menestrina, Stephan Ellner, John Cieslewicz， Ian Rae, Traian Stancescu, Himani Apte [VLDB]
In recent years, conventional wisdom has been that when you need a highly scalable, high throughput data store, the only viable options are NoSQL key/value stores, and you need to work around the lack of transactional consistency， indexes, and SQL. F1 is a hybrid database we built that combines the strengths of traditional relational databases with the scalability of NoSQL systems, showing it's not necessary to compromise on database functionality to achieve scalability and high availability. The paper describes the F1 system, how we use Spanner underneath, and how we've designed schema and applications to hide the increased commit latency inherent in distributed commit protocols.