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Dive into the research topics where Kieran Richard Mcdonald is active.

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Featured researches published by Kieran Richard Mcdonald.


european conference on information retrieval | 2016

Modeling User Interests for Zero-Query Ranking

Liu Yang; Qi Guo; Yang Song; Sha Meng; Milad Shokouhi; Kieran Richard Mcdonald; W. Bruce Croft

Proactive search systems like Google Now and Microsoft Cortana have gained increasing popularity with the growth of mobile Internet. Unlike traditional reactive search systems where search engines return results in response to queries issued by the users, proactive systems actively push information cards to the users on mobile devices based on the context around time, location, environment (e.g., weather), and user interests. A proactive system is a zero-query information retrieval system, which makes user modeling critical for understanding user information needs. In this paper, we study user modeling in proactive search systems and propose a learning to rank method for proactive ranking. We explore a variety of ways of modeling user interests, ranging from direct modeling of historical interaction with content types to finer-grained entity-level modeling, and user demographical information. To reduce the feature sparsity problem in entity modeling, we propose semantic similarity features using word embedding and an entity taxonomy in knowledge base. Experiments performed with data from a large commercial proactive search system show that our method significantly outperforms a strong baseline method deployed in the production system.


ACM Transactions on Information Systems | 2017

Collaborative Intent Prediction with Real-Time Contextual Data

Yu Sun; Nicholas Jing Yuan; Xing Xie; Kieran Richard Mcdonald; Rui Zhang

Intelligent personal assistants on mobile devices such as Apple’s Siri and Microsoft Cortana are increasingly important. Instead of passively reacting to queries, they provide users with brand new proactive experiences that aim to offer the right information at the right time. It is, therefore, crucial for personal assistants to understand users’ intent, that is, what information users need now. Intent is closely related to context. Various contextual signals, including spatio-temporal information and users’ activities, can signify users’ intent. It is, however, challenging to model the correlation between intent and context. Intent and context are highly dynamic and often sequentially correlated. Contextual signals are usually sparse, heterogeneous, and not simultaneously available. We propose an innovative collaborative nowcasting model to jointly address all these issues. The model effectively addresses the complex sequential and concurring correlation between context and intent and recognizes users’ real-time intent with continuously arrived contextual signals. We extensively evaluate the proposed model with real-world data sets from a commercial personal assistant. The results validate the effectiveness the proposed model, and demonstrate its capability of handling the real-time flow of contextual signals. The studied problem and model also provide inspiring implications for new paradigms of recommendation on mobile intelligent devices.


Archive | 2007

Link discovery from web scripts

Kieran Richard Mcdonald; Srinath Reddy Aaleti; Richard J. Qian


Archive | 2010

Providing entity-specific content in response to a search query

Alec John Berntson; Nitin Agrawal; Song Zhou; Yatharth Saraf; Tarun Joshi; Kieran Richard Mcdonald; Yohannes Tsegay; Nipoon Malhotra; Muhammad Aatif Awan; Sanaz Ahari; Timothy C. Hoad


Archive | 2010

Ranking search results using click-based data

Tapas Kanungo; Kumaresh Pattabiraman; Nitin Agrawal; Kieran Richard Mcdonald; Christopher Avery Meyers; Nipoon Malhotra


Archive | 2008

VISUAL QUERY SUGGESTIONS

Justin Denney; Timothy C. Hoad; Richard J. Qian; Kieran Richard Mcdonald; Justin Hamilton


knowledge discovery and data mining | 2016

Contextual Intent Tracking for Personal Assistants

Yu Sun; Nicholas Jing Yuan; Yingzi Wang; Xing Xie; Kieran Richard Mcdonald; Rui Zhang


Archive | 2011

PRESENTING SEARCH RESULT ITEMS HAVING VARIED PROMINENCE

Alec John Berntson; Sanaz Ahari; Kieran Richard Mcdonald; Muhammad Arif Iqbal


Archive | 2010

Placement of search results using user intent

Kieran Richard Mcdonald; Ran Gilad-Bachrach; Nipoon Malhotra; Nitin Agrawal; Sanaz Ahari


international world wide web conferences | 2016

Collaborative Nowcasting for Contextual Recommendation

Yu Sun; Nicholas Jing Yuan; Xing Xie; Kieran Richard Mcdonald; Rui Zhang

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Rui Zhang

University of Melbourne

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Yu Sun

University of Melbourne

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