Note that this paper list might be incomplete. If your
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tyliu@microsoft.com.
S. Agarwal, T. Graepel, T. Herbrich, S. Har-Peled, and D.
Roth. Generalization bounds for the area under the roc curve. Journal of
Machine Learning,
6:393-425, 2005.
S. Agarwal and P. Niyogi. Stability and generalization of
bipartite ranking algorithms. In COLT 2005, pages 32-47, 2005.
E. Agichtein, E. Brill, S. T. Dumais, and R. Ragno.
Learning user interaction models for predicting web search result
preferences. In SIGIR 2006, pages 3-10, 2006.
N. Ailon and MehryarMohri. An efficient reduction from
ranking to classification. In COLT 2008, 2008.
H. Almeida, M. Goncalves, M. Cristo, and P. Calado. A
combined component approach for finding collection-adapted ranking functions
based on genetic
programming. In SIGIR 2007, pages 399-406, 2007.
M.-R. Amini, T.-V. Truong, and C. Goutte. A boosting
algorithm for learning bipartite ranking functions with partially labeled
data. In SIGIR 2008, pages 99-106, 2008.
M.-F. Balcan, N. Bansal, A. Beygelzimer, D. Coppersmith,
J. Langford, and G. B. Sorkin. Robust reductions from ranking to
classification. In COLT
2007, 2007.
B. Bartell, G. W. Cottrell, and R. Belew. Learning to
retrieve information. In SCC 1995, 1995.
C. J. Burges, R. Ragno, and Q. V. Le. Learning to rank
with nonsmooth cost functions. In NIPS 2006, pages 395-402, 2006.
C. J. Burges, T. Shaked, E. Renshaw, A. Lazier, M. Deeds,
N. Hamilton, and G. Hullender. Learning to rank using gradient descent. In
ICML 2005, pages
89-96, 2005.
G. Cao, J. Nie, L. Si, J. Bai, Learning to Rank Documents
for Ad-Hoc Retrieval with Regularized Models, SIGIR 2007 workshop: Learning
to Rank for Information Retrieval, 2007
Y. Cao, J. Xu, T.-Y. Liu, H. Li, Y. Huang, and H.-W. Hon.
Adapting ranking svm to document retrieval. In SIGIR 2006, pages 186-193,
2006.
Z. Cao, T. Qin, T.-Y. Liu, M.-F. Tsai, and H. Li.
Learning to rank: from pairwise approach to listwise approach. In ICML 2007,
pages 129-136, 2007.
V. R. Carvalho, J. L. Elsas, W. W. Cohen, and J. G.
Carbonell. A metalearning
approach for robust rank learning. In SIGIR 2008 workshop on Learning to
Rank for Information Retrieval, 2008.
S. Chakrabarti, R. Khanna, U. Sawant, and C.
Bhattacharyya. Structured learning for non-smooth ranking losses. In SIGKDD
2008, pages 88-96, 2008.
O. Chapelle, Q. Le, and A. Smola. Large margin
optimization of ranking measures. In NIPS workshop on Machine Learning for
Web Search 2007,
2007.
W. Chu and Z. Ghahramani. Gaussian processes for ordinal
regression. Journal of Machine Learning Research, 6:1019-1041, 2005.
W. Chu and Z. Ghahramani. Preference learning with
Gaussian processes. In ICML 2005, pages 137-144, 2005.
W. Chu and S. S. Keerthi. New approaches to support
vector ordinal regression. In ICML 2005, pages 145-152, 2005.
S. Clemenson, G. Lugosi, and N. Vayatis. Ranking and
scoring using empirical risk minimization. In COLT 2005, 2005.
W. W. Cohen, R. E. Schapire, and Y. Singer. Learning to
order things. In NIPS 1998, volume 10, pages 243-270, 1998.
C. Cortes, M. Mohri, and etc. Magnitude-preserving
ranking algorithms. In ICML 2007, pages 169-176, 2007.
D. Cossock and T. Zhang. Subset ranking using regression.
In COLT 2006, pages 605-619, 2006.
K. Crammer and Y. Singer. Pranking with ranking. In NIPS
2002, pages 641-647, 2002.
K. Duh and K. Kirchhoff. Learning to rank with
partially-labeled data. In SIGIR 2008, pages 251-258, 2008.
W. Fan, E. A. Fox, P. Pathak, and H. Wu. The effects of
fitness functions on genetic programming based ranking discovery for web
search. Journal
of American Society for Information Science and Technology, 55(7):628-636,
2004.
W. Fan, M. Gordon, and P. Pathak. Discovery of
context-specific ranking functions for effective information retrieval using
genetic programming. IEEE
Transactions on Knowledge and Data Engineering, 16(4):523-527, 2004.
W. Fan, M. Gordon, and P. Pathak. A generic ranking
function discovery framework by genetic programming for information
retrieval. Information
Processing and Management, 40(4):587-602, 2004.
W. Fan, M. Gordon, and P. Pathak. Genetic
programming-based discovery of ranking functions for effective web search.
Journal of Management of Information Systems, 21(4):37-56, 2005.
W. Fan, M. Gordon, and P. Pathak. On linear mixture of
expert approaches to information retrieval. Decision Support System,
42(2):975-987, 2006.
W. Fan, M. D. Gordon, W. Xi, and E. A. Fox. Ranking
function optimization for effective web search by genetic programming: an
empirical study. In HICSS 2004, page 40105, 2004.
Y. Freund, R. Iyer, R. E. Schapire, and Y. Singer. An
efficient boosting algorithm for combining preferences. Journal of Machine
Learning Research,
4:933-969, 2003.
N. Fuhr. Optimum polynomial retrieval functions based on
the probability ranking principle. ACM Transactions on Information Systems,
7(3):183-204,
1989.
G. Fung, R. Rosales, and B. Krishnapuram, Learning
Rankings via Convex Hull Separation, NIPS 2005 workshop on Learning to Rank,
2005
J. Gao, H. Qi, X. Xia, and J. Nie. Linear discriminant
model for information retrieval. In SIGIR 2005, pages 290-297, 2005.
X.-B. Geng, T.-Y. Liu, and T. Qin. Feature selection for
ranking. In SIGIR 2007, pages 407-414, 2007.
X.-B. Geng, T.-Y. Liu, T. Qin, H. Li, and H.-Y. Shum.
Query-dependent ranking using k-nearest neighbor. In SIGIR 2008, pages
115-122, 2008.
J. Guiver and E. Snelson. Learning to rank with softrank
and gaussian processes. In SIGIR 2008, pages 259-266, 2008.
E. F. Harrington. Online ranking/collaborative filtering
using the perceptron algorithm. In ICML 2003, pages 250-257, 2003.
R. Herbrich, K. Obermayer, and T. Graepel. Large margin
rank boundaries for ordinal regression. In Advances in Large Margin
Classifiers, pages 115-132, 2000.
R. Jin, H. Valizadegan, and H. Li. Ranking refinement and
its application to information retrieval. In WWW 2008, pages 397-406, 2008.
T. Joachims. Optimizing search engines using clickthrough
data. In KDD 2002, pages 133-142, 2002.
T. Joachims. A support vector method for multivariate
performance measures. In ICML 2005, pages 377-384, 2005.
S. Kramer, G. Widmer, B. Pfahringer, and M. D. Groeve.
Prediction of ordinal classes using regression trees. Funfamenta
Informaticae, 34:1-15, 2000.
J. Lafferty and C. Zhai. Document language models, query
models and risk minimization for information retrieval. In SIGIR 2001, pages
111-119, 2001.
Y. Lan, T.-Y. Liu, T. Qin, Z. Ma, and H. Li. Query-level
stability and generalization in learning to rank. In ICML 2008, pages
512-519, 2008.
G. Lebanon and J. Lafferty. Cranking: Combining rankings
using conditional probability models on permutations. In ICML 2002, pages
363-370, 2002.
P. Li, C. Burges, and Q. Wu. Mcrank: Learning to rank
using multiple classification and gradient boosting. In NIPS 2007, 2007.
T.-Y. Liu, J. Xu, T. Qin, W.-Y. Xiong, and H. Li. LETOR:
Benchmark dataset for research on learning to rank for information
retrieval. In SIGIR กฏ07 Workshop on learning to rank for information
retrieval, 2007.
Y. Liu, T.-Y. Liu, T. Qin, Z. Ma, and H. Li. Supervised
rank aggregation. In WWW 2007, pages 481-490, 2007.
I. Matveeva, C. Burges, T. Burkard, A. Laucius, and L.
Wong. High accuracy retrieval with multiple nested ranker. In SIGIR 2006,
pages 437-444, 2006.
D. A. Metzler and W. B. Croft. A Markov random field
model for term dependencies. In SIGIR 2005, pages 472-479, 2005.
D. A. Metzler, W. B. Croft, and A. McCallum. Direct
maximization of rank based metrics for information retrieval. In CIIR
Technical Report, 2005.
D. A. Metzler and T. Kanungo. Machine learned sentence
selection strategies for query-biased summarization. In SIGIR 2008 workshop
on Learning to Rank for Information Retrieval, 2008.
T. Minka and S. Robertson. Selection bias in the LETOR
datasets. In SIGIR 2008 workshop on Learning to Rank for Information
Retrieval, 2008.
R. Nallapati. Discriminative models for information
retrieval. In SIGIR 2004, pages 64-71, 2004.
T. Pahikkala, E. Tsivtsivadze, A. Airola, J. Boberg, T.
Salakoski, Learning to Rank with Pairwise Regularized Least-Squares, SIGIR
2007 workshop: Learning to Rank for Information Retrieval, 2007
L. Rigutini, T. Papini, M. Maggini, and F. Scarselli.
Learning to rank by a neural-based sorting algorithm. In SIGIR 2008 workshop
on Learning to Rank for Information Retrieval, 2008.
T. Qin, T.-Y. Liu, W. Lai, X.-D. Zhang, D.-S.Wang, and H.
Li. Ranking with multiple hyperplanes. In SIGIR 2007, pages 279-286, 2007.
T. Qin, T.-Y. Liu, M.-F. Tsai, X.-D. Zhang, and H. Li.
Learning to search web pages with query-level loss functions. Technical
Report, MSR-TR-2006-156, 2006.
T. Qin, T.-Y. Liu, X.-D. Zhang, D. Wang, and H. Li.
Learning to rank relational objects and its application to web search. In
WWW 2008, pages
407-416, 2008.
T. Qin, T.-Y. Liu, X.-D. Zhang, D.-S. Wang, and H. Li.
Global ranking using continuous conditional random fields. In NIPS 2008,
2008.
T. Qin, T.-Y. L. X.-D. Zhang, M.-F. Tsai, D.-S. Wang, and
H. Li. Query-level loss functions for information retrieval. Information
Processing & Management, 44(2):838-855, 2007.
T. Qin, T.-Y. Liu, J. Xu, and H. Li. How to make LETOR
more useful and reliable. In SIGIR 2008 workshop on Learning to Rank for
Information Retrieval, 2008.
F. Radlinski and T. Joachims. Query chain: Learning to
rank from implicit feedback. In KDD 2005, pages 239-248, 2005.
F. Radlinski and T. Joachims. Active exploration for
learning rankings from clickthrough data. In KDD 2007, 2007.
F. Radlinski, R. Kleinberg, and T. Joachims. Learning
diverse rankings with multi-armed bandits. In ICML 2008, pages 784-791,
2008.
S. Rajaram and S. Agarwal. Generalization bounds for
k-partite ranking. In NIPS 2005 WorkShop on Learning to Rank, 2005.
S. Robertson and H. Zaragoza. On rank-based effectiveness
measures and optimization. Information Retrieval, 10(3):321-339, 2007.
C. Rudin, C. Cortes, M. Mohri, and R. E. Schapire,
Margin-Based Ranking Meets Boosting in the Middle, COLT 2005.
A. Shashua and A. Levin. Ranking with large margin
principles: Two approaches. In NIPS 2002, pages 937-944, 2002.
M. Talyor, J. Guiver, and etc. Softrank: Optimising
non-smooth rank metrics. In WSDM 2008, pages 77-86, 2008.
M. Taylor, H. Zaragoza, N. Craswell, S. Robertson, and C.
J. Burges. Optimisation methods for ranking functions with multiple
parameters. In CIKM
2006, pages 585-593, 2006.
A. Trotman. Learning to rank. Information Retrieval,
8(3):359-381, 2005.
M.-F. Tsai, T.-Y. Liu, T. Qin, H.-H. Chen, and W.-Y. Ma.
Frank: a ranking method with fidelity loss. In SIGIR 2007, pages 383-390,
2007.
A. Veloso, H. M. de Almeida, M. A. Gon?alves, and W. M.
Jr. Learning to rank at query-time using association rules. In SIGIR 2008,
pages 267-274,
2008.
N. Usunier, V. Truong, M. R. Amini, and P. Gallinari,
Ranking with Unlabeled Data: A First Study, NIPS 2005 workshop:Learning to
Rank, 2005.
W. Xi, J. Lind, and E. Brill, Learning effective ranking
functions for newsgroup search, SIGIR 2004.
F. Xia, T.-Y. Liu, J. Wang, W. Zhang, and H. Li. Listwise
approach to learning to rank - theorem and algorithm. In ICML 2008, pages
1192-1199,
2008.
J. Xu, Y. Cao, H. Li, and Y. Huang. Cost-sensitive
learning of SVM for ranking. In ECML 2006, pages 833-840, 2006.
J. Xu and H. Li. Adarank: a boosting algorithm for
information retrieval. In SIGIR 2007, pages 391-398, 2007.
J. Xu, T.-Y. Liu, M. Lu, H. Li, and W.-Y. Ma. Directly
optimizing IR evaluation measures in learning to rank. In SIGIR 2008, pages
107-114, 2008.
J.-Y. Yeh, J.-Y. Lin, and etc. Learning to rank for
information retrieval using genetic programming. In LR4IR 2007, 2007.
H. Yu. SVM selective sampling for ranking with
application to data retrieval. In KDD 2005, pages 354-363, 2005.
Y. Yue, T. Finley, F. Radlinski, and T. Joachims. A
support vector method for optimizing average precision. In SIGIR 2007, pages
271-278, 2007.
Y. Yue and T. Joachims. Predicting diverse subsets using
structural SVM. In ICML 2008, pages 1224-1231, 2008.
C. Zhai and J. Lafferty. A risk minimization framework
for information retrieval. Information Processing and Management,
42(1):31-55, 2006.
Z. Zheng, K. Chen, G. Sun, and H. Zha. A regression
framework for learning ranking functions using relative relevance judgments.
In SIGIR 2007, pages
287-294, 2007.
Z. Zheng, H. Zha, and G. Sun. Query-level learning to
rank using isotonic regression. In SIGIR 2008 workshop on Learning to Rank
for Information Retrieval, 2008.
Z. Zheng, H. Zha, and etc. A general boosting method and
its application to learning ranking functions for web search. In NIPS 2007,
2007.
K. Zhou, G.-R. Xue, H. Zha, and Y. Yu. Learning to rank
with ties. In SIGIR 2008, pages 275-282, 2008.
O. Zoeter, M. Taylor, E. Snelson, J. Guiver, N. Craswell,
and M. Szummer. A decision theoretic framework for ranking using implicit
feedback. In SIGIR 2008 workshop on Learning to Rank for Information
Retrieval, 2008.