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Dive into the research topics where Ciya Liao is active.

Publication


Featured researches published by Ciya Liao.


web search and data mining | 2010

Towards recency ranking in web search

Anlei Dong; Yi Chang; Zhaohui Zheng; Gilad Mishne; Jing Bai; Ruiqiang Zhang; Karolina Buchner; Ciya Liao; Fernando Diaz

In web search, recency ranking refers to ranking documents by relevance which takes freshness into account. In this paper, we propose a retrieval system which automatically detects and responds to recency sensitive queries. The system detects recency sensitive queries using a high precision classifier. The system responds to recency sensitive queries by using a machine learned ranking model trained for such queries. We use multiple recency features to provide temporal evidence which effectively represents document recency. Furthermore, we propose several training methodologies important for training recency sensitive rankers. Finally, we develop new evaluation metrics for recency sensitive queries. Our experiments demonstrate the efficacy of the proposed approaches.


web search and data mining | 2010

Early exit optimizations for additive machine learned ranking systems

Berkant Barla Cambazoglu; Hugo Zaragoza; Olivier Chapelle; Jiang Chen; Ciya Liao; Zhaohui Zheng; Jon Rexford Degenhardt

Some commercial web search engines rely on sophisticated machine learning systems for ranking web documents. Due to very large collection sizes and tight constraints on query response times, online efficiency of these learning systems forms a bottleneck. An important problem in such systems is to speedup the ranking process without sacrificing much from the quality of results. In this paper, we propose optimization strategies that allow short-circuiting score computations in additive learning systems. The strategies are evaluated over a state-of-the-art machine learning system and a large, real-life query log, obtained from Yahoo!. By the proposed strategies, we are able to speedup the score computations by more than four times with almost no loss in result quality.


Information Retrieval | 2011

Intent-based diversification of web search results: metrics and algorithms

Olivier Chapelle; Shihao Ji; Ciya Liao; Emre Velipasaoglu; Larry Lai; Su-Lin Wu

We study the problem of web search result diversification in the case where intent based relevance scores are available. A diversified search result will hopefully satisfy the information need of user-L.s who may have different intents. In this context, we first analyze the properties of an intent-based metric, ERR-IA, to measure relevance and diversity altogether. We argue that this is a better metric than some previously proposed intent aware metrics and show that it has a better correlation with abandonment rate. We then propose an algorithm to rerank web search results based on optimizing an objective function corresponding to this metric and evaluate it on shopping related queries.


international acm sigir conference on research and development in information retrieval | 2009

Global ranking by exploiting user clicks

Shihao Ji; Ke Zhou; Ciya Liao; Zhaohui Zheng; Gui-Rong Xue; Olivier Chapelle; Gordon Sun; Hongyuan Zha

It is now widely recognized that user interactions with search results can provide substantial relevance information on the documents displayed in the search results. In this paper, we focus on extracting relevance information from one source of user interactions, i.e., user click data, which records the sequence of documents being clicked and not clicked in the result set during a user search session. We formulate the problem as a global ranking problem, emphasizing the importance of the sequential nature of user clicks, with the goal to predict the relevance labels of all the documents in a search session. This is distinct from conventional learning to rank methods that usually design a ranking model defined on a single document; in contrast, in our model the relational information among the documents as manifested by an aggregation of user clicks is exploited to rank all the documents jointly. In particular, we adapt several sequential supervised learning algorithms, including the conditional random field (CRF), the sliding window method and the recurrent sliding window method, to the global ranking problem. Experiments on the click data collected from a commercial search engine demonstrate that our methods can outperform the baseline models for search results re-ranking.


international acm sigir conference on research and development in information retrieval | 2009

Enhancing topical ranking with preferences from click-through data

Yi Chang; Anlei Dong; Ciya Liao; Zhaohui Zheng

To overcome the training data insufficiency problem for dedicated model in topical ranking, this paper proposes to utilize click-through data to improve learning. The efficacy of click-through data is explored under the framework of preference learning. The empirical experiment on a commercial search engine shows that, the model trained with the dedicated labeled data combined with skip-next preferences could beat the baseline model and the generic model in NDCG5 for 4.9% and 2.4% respectively.


web search and data mining | 2010

A model to estimate intrinsic document relevance from the clickthrough logs of a web search engine

Georges Dupret; Ciya Liao


Archive | 2009

Incorporating Recency in Network Search Using Machine Learning

Anlei Dong; Yi Chang; Ruiqiang Zhang; Zhaohui Zheng; Gilad Mishne; Jing Bai; Karolina Buchner; Ciya Liao; Shihao Ji; Gilbert Leung; Georges-Eric Albert Marie Robert Dupret; Ling Liu


national conference on artificial intelligence | 2010

Session based click features for recency ranking

Yoshiyuki Inagaki; Narayanan Sadagopan; Georges-Eric Albert Marie Robert Dupret; Ciya Liao; Anlei Dong; Yi Chang; Zhaohui Zheng


Archive | 2009

Global and topical ranking of search results using user clicks

Shihao Ji; Anlei Dong; Ciya Liao; Yi Chang; Zhaohui Zheng; Olivier Chapelle; Gordon Sun; Hongyuan Zha


Archive | 2010

Ranking for Informational and Unpopular Search Queries by Cumulating Click Relevance

Georges-Eric Albert Marie Robert Dupret; Ciya Liao

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