Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Andrew Feng is active.

Publication


Featured researches published by Andrew Feng.


international acm sigir conference on research and development in information retrieval | 2016

Scalable Semantic Matching of Queries to Ads in Sponsored Search Advertising

Mihajlo Grbovic; Nemanja Djuric; Vladan Radosavljevic; Fabrizio Silvestri; Ricardo A. Baeza-Yates; Andrew Feng; Erik Ordentlich; Lee Yang; Gavin Owens

Sponsored search represents a major source of revenue for web search engines. The advertising model brings a unique possibility for advertisers to target direct user intent communicated through a search query, usually done by displaying their ads alongside organic search results for queries deemed relevant to their products or services. However, due to a large number of unique queries, it is particularly challenging for advertisers to identify all relevant queries. For this reason search engines often provide a service of advanced matching, which automatically finds additional relevant queries for advertisers to bid on. We present a novel advance match approach based on the idea of semantic embeddings of queries and ads. The embeddings were learned using a large data set of user search sessions, consisting of search queries, clicked ads and search links, while utilizing contextual information such as dwell time and skipped ads. To address the large-scale nature of our problem, both in terms of data and vocabulary size, we propose a novel distributed algorithm for training of the embeddings. Finally, we present an approach for overcoming a cold-start problem associated with new ads and queries. We report results of editorial evaluation and online tests on actual search traffic. The results show that our approach significantly outperforms baselines in terms of relevance, coverage and incremental revenue. Lastly, as part of this study, we open sourced query embeddings that can be used to advance the field.


Archive | 2006

Real-time user profile platform for targeted online advertisement and personalization

Andrew Feng; Nilesh Ramniklal Gohel


Archive | 2007

SYSTEM FOR STORING DISTRIBUTED HASHTABLES

Andrew Feng; Michael Bigby; Bryan Call; Brian F. Cooper; Daniel Weaver


Archive | 2012

PUBLISH-SUBSCRIBE PLATFORM FOR CLOUD FILE DISTRIBUTION

Andrew Feng; Rohit Chandra; Lakshmanan Suryanarayanan; Timothy R. Crowder; Victor J. Lam


Archive | 2007

Dynamic Data Reorganization to Accommodate Growth Across Replicated Databases

Ramana Yerneni; Michael Bigby; Philip Bohannon; Bryan Call; Brian F. Cooper; Andrew Feng; David Lomax; Raghu Ramakrishnan; Utkarsh Srivastava; Daniel Weaver


Archive | 2007

Asynchronously replicated database system using dynamic mastership

Andrew Feng; Michael Bigby; Bryan Call; Brian F. Cooper; Daniel Weaver


Archive | 2013

UNIFIED END USER NOTIFICATION PLATFORM

Andrew Feng; N. Nachiappan; Bruno M. Fernandez-Ruiz; Lin Shen


Archive | 2008

Comparison of online advertising data consistency

Andrew Feng; Rohit Chandra; Srihari Venkatesan


Archive | 2008

SYSTEMS AND METHODS FOR PROVIDING CONSTRAINT-BASED ADVERTISING

Andrew Feng; Patrick Loo; Rohit Chandra; Ying-Fu Su; Stephen Carney; Vikas Gupta; Stephen Quan


Archive | 2007

System for maintaining a database

Andrew Feng; Michael Bigby; Bryan Call; Brian F. Cooper; Daniel Weaver

Collaboration


Dive into the Andrew Feng's collaboration.

Researchain Logo
Decentralizing Knowledge