| 2009 | ||
|---|---|---|
| 78 | Tetsuji Takahashi, Mineichi Kudo, Atsuyoshi Nakamura: Classifier Selection in a Family of Polyhedron Classifiers. CIARP 2009: 441-448 | |
| 77 | Mineichi Kudo, Jun Toyama, Hideyuki Imai: A Fast Nearest Neighbor Method Using Empirical Marginal Distribution. KES (2) 2009: 333-339 | |
| 76 | Satoshi Shirai, Mineichi Kudo, Atsuyoshi Nakamura: Comparison of Bagging and Boosting Algorithms on Sample and Feature Weighting. MCS 2009: 22-31 | |
| 2008 | ||
| 75 | Atsuyoshi Nakamura, Mineichi Kudo: What Sperner Family Concept Class is Easy to Be Enumerated? ICDM 2008: 482-491 | |
| 74 | Yohji Shidara, Mineichi Kudo, Atsuyoshi Nakamura: Classification by bagged consistent itemset rules. ICPR 2008: 1-4 | |
| 73 | Mineichi Kudo, Atsuyoshi Nakamura, Ichigaku Takigawa: Classification by reflective convex hulls. ICPR 2008: 1-4 | |
| 72 | Kazuhiro Kamiya, Mineichi Kudo, Hidetoshi Nonaka, Jun Toyama: Sitting posture analysis by pressure sensors. ICPR 2008: 1-4 | |
| 71 | Akira Tanaka, Hideyuki Imai, Mineichi Kudo, Masaaki Miyakoshi: Optimal Kernel in a Class of Kernels with an Invariant Metric. SSPR/SPR 2008: 530-539 | |
| 70 | Kazuaki Aoki, Mineichi Kudo: Feature and Classifier Selection in Class Decision Trees. SSPR/SPR 2008: 562-571 | |
| 69 | Hiroshi Tenmoto, Mineichi Kudo: Soft Feature Selection by Using a Histogram-Based Classifier. SSPR/SPR 2008: 572-581 | |
| 68 | Satoshi Shirai, Mineichi Kudo, Atsuyoshi Nakamura: Bagging, Random Subspace Method and Biding. SSPR/SPR 2008: 801-810 | |
| 67 | Maiko Sato, Mineichi Kudo, Jun Toyama: Behavior Analysis of Volume Prototypes in High Dimensionality. SSPR/SPR 2008: 874-884 | |
| 66 | Mineichi Kudo, Tetsuya Murai: Extended DNF Expression and Variable Granularity in Information Tables. IEEE T. Fuzzy Systems 16(2): 285-298 (2008) | |
| 65 | Yohji Shidara, Mineichi Kudo, Atsuyoshi Nakamura: Classification Based on Consistent Itemset Rules. Trans. MLDM 1(1): 17-30 (2008) | |
| 2007 | ||
| 64 | Hisashi Tosaka, Atsuyoshi Nakamura, Mineichi Kudo: Mining Subtrees with Frequent Occurrence of Similar Subtrees. Discovery Science 2007: 286-290 | |
| 63 | Mineichi Kudo, Satoshi Shirai, Hiroshi Tenmoto: A Combination of Sample Subsets and Feature Subsets in One-Against-Other Classifiers. MCS 2007: 241-250 | |
| 62 | Yohji Shidara, Atsuyoshi Nakamura, Mineichi Kudo: CCIC: Consistent Common Itemsets Classifier. MLDM 2007: 490-498 | |
| 61 | Yuji Muto, Mineichi Kudo, Yohji Shidara: Reduction of Categorical and Numerical Attribute Values for Understandability of Data and Rules. RSKT 2007: 211-218 | |
| 60 | Akira Tanaka, Hideyuki Imai, Mineichi Kudo, Masaaki Miyakoshi: Integrated kernels and their properties. Pattern Recognition 40(11): 2930-2938 (2007) | |
| 2006 | ||
| 59 | Masafumi Yamada, Mineichi Kudo, Hidetoshi Nonaka, Jun Toyama: Hipprint Person Identification and Behavior Analys. ICPR (4) 2006: 533-536 | |
| 58 | Akira Tanaka, Masashi Sugiyama, Hideyuki Imai, Mineichi Kudo, Masaaki Miyakoshi: Model Selection Using a Class of Kernels with an Invariant Metric. SSPR/SPR 2006: 862-870 | |
| 57 | Yuji Muto, Mineichi Kudo, Tetsuya Murai: Reduction of Attribute Values for Kansei Representation. JACIII 10(5): 666-672 (2006) | |
| 56 | Naoto Abe, Mineichi Kudo, Jun Toyama, Masaru Shimbo: Classifier-independent feature selection on the basis of divergence criterion. Pattern Anal. Appl. 9(2-3): 127-137 (2006) | |
| 55 | Naoto Abe, Mineichi Kudo: Non-parametric classifier-independent feature selection. Pattern Recognition 39(5): 737-746 (2006) | |
| 2005 | ||
| 54 | Hidehiko Ino, Mineichi Kudo, Atsuyoshi Nakamura: A Comparative Study of Algorithms for Finding Web Communities. ICDE Workshops 2005: 1257 | |
| 53 | Hiroyuki Hasegawa, Mineichi Kudo, Atsuyoshi Nakamura: Empirical Study on Usefulness of Algorithm SACwRApper for Reputation Extraction from the WWW. KES (4) 2005: 668-674 | |
| 52 | Taisuke Hosokawa, Mineichi Kudo: Person Tracking with Infrared Sensors. KES (4) 2005: 682-688 | |
| 51 | Naoto Abe, Mineichi Kudo: Entropy Criterion for Classifier-Independent Feature Selection. KES (4) 2005: 689-695 | |
| 50 | Hiroshi Tenmoto, Mineichi Kudo: Finding and Auto-labeling of Task Groups on E-Mails and Documents. KES (4) 2005: 696-702 | |
| 49 | Masafumi Yamada, Jun Toyama, Mineichi Kudo: Person Recognition by Pressure Sensors. KES (4) 2005: 703-708 | |
| 48 | Ichigaku Takigawa, Mineichi Kudo, Atsuyoshi Nakamura: The Convex Subclass Method: Combinatorial Classifier Based on a Family of Convex Sets. MLDM 2005: 90-99 | |
| 47 | Atsuyoshi Nakamura, Mineichi Kudo: Mining Frequent Trees with Node-Inclusion Constraints. PAKDD 2005: 850-860 | |
| 46 | Mineichi Kudo, Tetsuya Murai: A New Treatment and Viewpoint of Information Tables. RSFDGrC (1) 2005: 234-243 | |
| 45 | Yuji Muto, Mineichi Kudo: Discernibility-Based Variable Granularity and Kansei Representations. RSFDGrC (1) 2005: 692-700 | |
| 44 | Hiroshi Tenmoto, Mineichi Kudo: Density- and Complexity-Regularization in Gaussian Mixture Bayesian Classifier. WSTST 2005: 391-399 | |
| 43 | Hidehiko Ino, Mineichi Kudo, Atsuyoshi Nakamura: Partitioning of Web graphs by community topology. WWW 2005: 661-669 | |
| 42 | Yohji Shidara, Mineichi Kudo, Atsuyoshi Nakamura: Extraction of Generalized Rules with Automated Attribute Abstraction. Foundations of Data Mining and knowledge Discovery 2005: 161-170 | |
| 41 | Kazuaki Aoki, Toshiharu Watanabe, Mineichi Kudo: Design of decision trees using class-dependent feature subsets. Systems and Computers in Japan 36(4): 37-47 (2005) | |
| 2004 | ||
| 40 | Ichigaku Takigawa, Mineichi Kudo, Atsuyoshi Nakamura, Jun Toyama: On the Minimum l1-Norm Signal Recovery in Underdetermined Source Separation. ICA 2004: 193-200 | |
| 39 | Michal Haindl, Jiri Grim, Petr Somol, Pavel Pudil, Mineichi Kudo: A Gaussian Mixture-Based Colour Texture Model. ICPR (3) 2004: 177-180 | |
| 38 | Akira Tanaka, Ichigaku Takigawa, Hideyuki Imai, Mineichi Kudo, Masaaki Miyakoshi: Projection Learning Based Kernel Machine Design Using Series of Monotone Increasing Reproducing Kernel Hilbert Spaces. KES 2004: 1058-1064 | |
| 37 | Masafumi Yamada, Mineichi Kudo: Combination of Weak Evidences by D-S Theory for Person Recognition. KES 2004: 1065-1071 | |
| 36 | Tetsuya Murai, Masayuki Sanada, Yasuo Kudo, Mineichi Kudo: A Note on Ziarko's Variable Precision Rough Set Model and Nonmonotonic Reasoning. Rough Sets and Current Trends in Computing 2004: 103-108 | |
| 35 | Hiroshi Tenmoto, Yasukuni Mori, Mineichi Kudo: Classifier-Independent Visualization of Supervised Data Structures Using a Graph. SSPR/SPR 2004: 1043-1051 | |
| 34 | Mineichi Kudo, Hideyuki Imai, Akira Tanaka, Tetsuya Murai: A Nearest Neighbor Method Using Bisectors. SSPR/SPR 2004: 885-893 | |
| 2003 | ||
| 33 | Atsuyoshi Nakamura, Mineichi Kudo, Akira Tanaka, Kazuhiko Tanabe: Collaborative Filtering Using Projective Restoration Operators. Discovery Science 2003: 393-401 | |
| 32 | Atsuyoshi Nakamura, Mineichi Kudo, Akira Tanaka: Collaborative Filtering Using Restoration Operators. PKDD 2003: 339-349 | |
| 31 | Mineichi Kudo, Naoto Masuyama, Jun Toyama, Masaru Shimbo: Simple termination conditions for k-nearest neighbor method. Pattern Recognition Letters 24(9-10): 1203-1213 (2003) | |
| 2002 | ||
| 30 | Naoto Abe, Mineichi Kudo, Masaru Shimbo: Classifier-Independent Feature Selection Based on Non-parametric Discriminant Analysis. SSPR/SPR 2002: 470-479 | |
| 29 | Kazuaki Aoki, Mineichi Kudo: Decision Tree Using Class-Dependent Feature Subsets. SSPR/SPR 2002: 761-769 | |
| 2001 | ||
| 28 | Hiroki Hayashi, Mineichi Kudo, Jun Toyama, Masaru Shimbo: Fast Labelling of Natural Scenes Using Enhanced Knowledge. Pattern Anal. Appl. 4(1): 20-27 (2001) | |
| 27 | Yoshinori Yanagihara, Masanori Kawakami, Mineichi Kudo, Jun Toyama, Masaru Shimbo: A two-channel coding of images using spline surfaces. Systems and Computers in Japan 32(6): 13-20 (2001) | |
| 2000 | ||
| 26 | Mineichi Kudo, Hideyuki Imai, Masaru Shimbo: A Histogram-Based Classifier on Overlapped Bins. ICPR 2000: 2029-2033 | |
| 25 | Hiroshi Tenmoto, Mineichi Kudo, Masaru Shimbo: Selection of the Number of Components Using a Genetic Algorithm for Mixture Model Classifiers. SSPR/SPR 2000: 511-520 | |
| 24 | Naoto Abe, Mineichi Kudo, Jun Toyama, Masaru Shimbo: A Divergence Criterion for Classifier-Independent Feature Selection. SSPR/SPR 2000: 668-676 | |
| 23 | Mineichi Kudo, Petr Somol, Pavel Pudil, Masaru Shimbo, Jack Sklansky: Comparison of Classifier-Specific Feature Selection Algorithms. SSPR/SPR 2000: 677-686 | |
| 22 | Mineichi Kudo, Jack Sklansky: Comparison of algorithms that select features for pattern classifiers. Pattern Recognition 33(1): 25-41 (2000) | |
| 1999 | ||
| 21 | Hiroshi Tenmoto, Mineichi Kudo, Masaru Shimbo: Determination of the number of components based on class separability in mixture-based classifiers. KES 1999: 439-442 | |
| 20 | Naoto Masuyama, Mineichi Kudo, Jun Toyama, Masaru Shimbo: Termination conditions for a fast k-nearest neighbor method. KES 1999: 443-446 | |
| 19 | Hiroki Hayashi, Mineichi Kudo, Jun Toyama, Masaru Shimbo: Estimation of velocity vectors from a video stream using discontinuity of optical flow. KES 1999: 447-450 | |
| 18 | Masanori Kawakami, Mineichi Kudo, Jun Toyama, Masaru Shimbo: Effective sampling points for two-channel spline image coding. KES 1999: 451-454 | |
| 17 | T. Gotoh, Mineichi Kudo, Jun Toyama, Masaru Shimbo: Geometry reconstruction of urban scenes by tracking vertical edges. KES 1999: 455-458 | |
| 16 | J. Konishi, S. Shimba, Jun Toyama, Mineichi Kudo, Masaru Shimbo: Tabu search for solving optimization problems on Hopfield neural networks. KES 1999: 518-521 | |
| 15 | Mineichi Kudo, Jun Toyama, Masaru Shimbo: Multidimensional curve classification using passing-through regions. Pattern Recognition Letters 20(11-13): 1103-1111 (1999) | |
| 1998 | ||
| 14 | Mineichi Kudo, F. Taniguchi, Hiroshi Tenmoto, Masaru Shimbo: Appropriate initial component densities of mixture modeling for pattern recognition. KES (2) 1998: 216-220 | |
| 13 | Shinichi Yanagi, Mineichi Kudo, Masaru Shimbo: Polynomial-sample learnability about distance-0 and 1 DNF formulas. KES (2) 1998: 230-235 | |
| 12 | Mineichi Kudo, Jack Sklansky: Classifier-Independent Feature Selection For Two-Stage Feature Selection. SSPR/SPR 1998: 548-554 | |
| 11 | Maiko Sato, Mineichi Kudo, Jun Toyama, Masaru Shimbo: Feature Selection For a Nonlinear Classifier. SSPR/SPR 1998: 555-563 | |
| 10 | Hiroshi Tenmoto, Mineichi Kudo, Masaru Shimbo: MDL-Based Selection of the Number of Components in Mixture Models for Pattern Classification. SSPR/SPR 1998: 831-836 | |
| 9 | Hiroshi Tenmoto, Mineichi Kudo, Masaru Shimbo: Piecewise linear classifiers with an appropriate number of hyperplanes. Pattern Recognition 31(11): 1627-1634 (1998) | |
| 8 | Mineichi Kudo, Yoichiro Torii, Yasukuni Mori, Masaru Shimbo: Approximation of class regions by quasi convex hulls. Pattern Recognition Letters 19(9): 777-786 (1998) | |
| 1997 | ||
| 7 | F. Taniguchi, Mineichi Kudo, Masaru Shimbo: Estimation of class regions in feature space using rough set theory. KES (2) 1997: 373-377 | |
| 1996 | ||
| 6 | Mineichi Kudo, Shinichi Yanagi, Masaru Shimbo: Construction of class regions by a randomized algorithm: a randomized subclass method. Pattern Recognition 29(4): 581-588 (1996) | |
| 5 | Mineichi Kudo, Koji Mizukami, Yuji Nakamura, Masaru Shimbo: Realization of membership quiries in character recognition. Pattern Recognition Letters 17(1): 77-82 (1996) | |
| 1993 | ||
| 4 | Mineichi Kudo, Masaru Shimbo: Feature selection based on the structural indices of categories. Pattern Recognition 26(6): 891-901 (1993) | |
| 1992 | ||
| 3 | Mineichi Kudo, S. Kitamura-Abe, Masaru Shimbo, Y. Lida: Analysis of context of 5'-splice site sequences in mammalian mRNA precursors by subclass method. Computer Applications in the Biosciences 8(4): 367-376 (1992) | |
| 1988 | ||
| 2 | Mineichi Kudo, Masaru Shimbo: Efficient regular grammatical inference techniques by the use of partial similarities and their logical relationships. Pattern Recognition 21(4): 401-409 (1988) | |
| 1987 | ||
| 1 | Mineichi Kudo, Y. Iida, Masaru Shimbo: Syntactic pattern analysis of 5'-splice site sequences of mRNA precursors in higher eukaryote genes. Computer Applications in the Biosciences 3(4): 319-324 (1987) | |