Note: see the Genome Bioinformatics Group publications page for more recent publications.
Kent WJ, Haussler D. Assembly of the working draft of the human genome with GigAssembler. Genome Research. 2001 Sept;11(9):1541-8.
Vercoutere W, Winters-Hilt S, Olsen H, Deamer D, Haussler D, Akeson M. Rapid discrimination among individual DNA hairpin molecules at single nucleotide resolution using an ion channel. Nat Biotechnol. 2001 Mar;19(3):248-52.
International Human Genome Sequencing Consortium. Initial sequencing and analysis of the human genome. Nature. 2001;409(7):860-921.
The International Human Genome Mapping Consortium. A physical map of the human genome. Nature. 2001;409(6822):934-41.
BAC Resource Consortium. Integration of cytogenetic landmarks into the draft sequence of the human genome. Nature. 2001;409(6822):953-8.
Reese M, Kulp D, Tammana H, Haussler D. Genie—gene finding in Drosophila melanogaster. Genome Research. 2001;10(4):529-38.
Furey T, Cristianini N, Duffy N, Bednarski D, Schummer M, Haussler D. Support vector machine classification and validation of cancer tissue samples using microarray expression. Bioinformatics., 2000;16(10):906-14.
Brown M, Grundy W, Lin D, Cristianini N, Sugnet C, Furey T, Ares M, Haussler D. Knowledge-based analysis of microarray gene expression data using support vector machines. Proceedings of the National Academy of Science. 1999;97(1):262-7.
Jaakkola T, Diekhans M, Haussler D. A discriminative framework for detecting remote protein homologies. Journal of Computational Biology. 2000;7(1,2):95-114. [Postscript] [Abstract]
Spingola M, Grate L, Ares M, Haussler D. Genome-wide bioinformatic and molecular analysis of introns in Saccharomyces cerevisiae. RNA. 1999;5(2):221-34.
Park J, Karplus K, Barrett C, Hughey R, Haussler D, Hubbard T, Chothia C. Sequence comparisons using multiple sequences detect three times as many remote homologues as pairwise methods. [full text for preliminary version.] Final version appeared in Journal of Molecular Biology. 1998;284(4):1201-10.
Haussler D, Kivinen J, Warmuth M. Sequential prediction of individual sequences under general loss functions. IEEE Transactions on Information Theory. 1998;44(5):1906-25.
Opper M, Haussler D. Worst case prediction over sequences under log loss. In Cybenko G, O'Leary D, Rissanen J (eds): The Mathematics of Information Coding, Extraction and Distribution. Springer Verlag, 1998. [Postscript] [Abstract]
Karplus K, Sjolander K, Barrett C, Cline M, Haussler D, Hughey R, Holm L, Sander C. Predicting protein structure using hidden Markov models. [Postscript file] Proteins: Structure, Function and Genetics. 1997;29(Suppl 1):134-9.
Haussler D, Opper M. In Mycielski J, G. Rozenberg G, Salomaa A. Metric entropy and minimax risk in classification. (eds): Lecture Notes in Computer Science: Studies in Logic and Computer Science. 1997;1261:212-35. [Postscript] [Abstract]
Haussler D, Opper M. Mutual information, metric entropy, and cumulative relative entropy risk. Annals of Statistics. 1997 Dec;25(6):2451-92. [Compressed postscript file] [Abstract]
Haussler D, Opper M. Mutual information, metric entropy, and risk in estimation of probability distributions. Tech. rep. UCSC-CRL-96-27. 1996. (Long version of previous paper.) [Postscript]
Reese MG, Eeckman FH, Kulp D, Haussler D. Improved splice site detection in Genie. Journal of Computational Biology. 1997 Fall;4(3):311-23. [Abstract]
Alon N, Ben-David S, Cesa-Bianchi N, Haussler D. Scale-sensitive dimensions, uniform convergence, and learnability. Journal of the ACM. 1997 July;44(4):615-31. [Abstract]
Haussler D. A general minimax result for relative entropy. IEEE Transactions on Information Theory., 1997 July; 43(4):1276-80. Also tech. rep. UCSC-CRL-96-26. [PDF] [56k compressed postscript] [Abstract]
Cesa-Bianchi N, Freund Y, Haussler D, Helmbold D, Schapire R, Warmuth M. How to use expert advice. J. ACM. 1997;44(3):427-85. Based on University of California, Santa Cruz technical report UCSC-CRL-95-19. [Postscript] [Abstract]
Haussler D, Kearns M, Seung HS, Tishby N. Rigorous learning curve bounds from statistical mechanics. Machine Learning. 1996;25(2/3):195-236. [Abstract]
Fayyad U, Haussler D, Stolorz P. Mining scientific data. Communications of the ACM. 1996 Nov;39(11):51-7.
Sjölander K, Karplus K , Brown M, Hughey R, Krogh A, Mian IS, Haussler D. Dirichlet mixtures: a method for improving detection of weak but significant protein sequence homology. Computer Applications in the Biosciences (CABIOS). 1996;12(4):327-45. [Abstract]
Haussler D. Sphere packing numbers for subsets of the Boolean n-cube with bounded Vapnik-Chervonenkis dimension. Journal of Combinatorial Theory Series A. 1995 Feb;69(2):217-32.
Ben-David S, Cesa-Bianchi N, Haussler D, Long P. Characterizations of learnability for classes of {0,...,n}-valued functions. Journal of Computer Systems Science. 1995;50(1):74-86. [Postscript]
Opper M, Haussler D. Bounds for predictive errors in the statistical mechanics of supervised learning. Physical Review Letters. 1995;75(20):3772-5. [Abstract]
Haussler D, Long PM. A generalization of Sauer's lemma. Journal of Combinatorial Theory. 1995 August;71(2):219-40.
Krough A, Brown M, Mian S, Sjölander K. Hidden Markov models in computational biology: applications to protein modeling. Journal Molecular Biology. 1994 Feb;235(5):1501-31. [Longer technical report version, PDF]
Haussler D, Littlestone N, Warmuth M. Predicting {0,1}-functions on randomly drawn points. Information and Computation. 1994 Dec;115(2):248-92.
Haussler D, Kearns M, Schapire R. Bounds on the sample complexity of Bayesian learning using information theory and the VC dimension. Machine Learning. 1994;14(1):83-114.
Krogh A, Mian S, Haussler D. A hidden Markov model that finds genes in E. coli DNA. Nucleic Acids Research. 1994;22( 22):4768-78. [Abstract]
Sakakibara Y, Brown M, Hughey R, Mian S, Sjölander K, Underwood R, Haussler D. Stochastic context-free grammars for tRNA modeling. Nucleic Acids Research., 1994;22(23):5112-20. [PDF] [Postscript] [Abstract]
PAC learning model, and decision-theoretic generalizations, with applications to neural nets. Chapter in Mathematical Perspectives on Neural Networks, Lawrence Erlbaum Associates, 1995, containing reprinted material from "Decision Theoretic Generalizations of the PAC Model for Neural Net and Other Learning Applications", Information and Computation. 1992 Sept;100:78-150. [Postscript]
Pagallo G, Haussler D. Boolean feature discovery in empirical learning. Machine Learning. 1990;5(1):71-99.
Blumer A, Blumer J, Haussler D, McConnell R, Ehrenfeucht A. Complete inverted files for efficient text retrieval and analysis. Joumal of the Association for Computing Machinery. 1987;34(3):578-95.
Haussler D, Welzl E. Epsilon-nets and simplex range queries. Discrete and Computational Geometry. 1987.
Blumer A, Blumer J, Haussler D, Ehrenfeucht A, Chen MT, Seiferas J. The smallest automaton recognizing the subwords of a text. Theoretical Computer Science. 1985;40:31-55.
|