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悟 宮野

Bio: 悟 宮野 is an academic researcher from Kyushu University. The author has contributed to research in topics: Formal system & Asymptotic computational complexity. The author has an hindex of 9, co-authored 25 publications receiving 316 citations.

Papers
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19 Apr 1990
TL;DR: In this paper, the authors introduce a notion of teachability with which they establish a relationship between the learnability and teachability, and discuss the complexity issues of a teacher in relation to learning.
Abstract: This paper considers computational learning from the view-point of teaching. We introduce a notion of teachability with which we establish a relationship between the learnability and teachability. We also discuss the complexity issues of a teacher in relation to learning.

90 citations

20 Jul 1992
TL;DR: It is proved that a class of graphs is generated by a hyperedge replacement grammar if and only if it is defined by an FGS of a special form called a regular FGS, which is a logic program having hypergraphs instead of terms in first-order logic.

24 citations

01 Aug 1991
TL;DR: In this article, a machine learning system that discovered a negative motif, in transmembrane domain identification from amino acid sequences, and reports its experiments on protein data using PIR database is described.
Abstract: This paper describes a machine learning system that discovered a “negative motif”, in transmembrane domain identification from amino acid sequences, and reports its experiments on protein data using PIR database. We introduce a decision tree whose nodes are labeled with regular patterns. As a hypothesis, the system produces such a decision tree for a small number of randomly chosen positive and negative examples from PIR. Experiments show that our system finds reasonable hypotheses very successfully. As a theoretical foundation, we show that the class of languages defined by decesion trees of depth at mostd overk-variable regular patterns is polynomial-time learnable in the sense of probably approximately correct (PAC) learning for any fixedd, k≥0.

22 citations

27 Mar 1992
TL;DR: This paper outlines in brief the authors' studies on algorithmic learning theory developed in the framework of EFS's and shows that inductive inference from positive data and PAC-learning are both much more powerful than they have been believed.
Abstract: The elementary formal system (EFS, for short) is a kind of logic program which directly manipulates character strings. This paper outlines in brief the authors' studies on algorithmic learning theory developed in the framework of EFS's. We define two important classes of EFS's and a new hierarchy of various language classes. Then we discuss EFS's as logic programs. We show that EFS's form a good framework for inductive inference of languages by presenting model inference system for EFS's in Shapiro's sense. Using the framework we also show that inductive inference from positive data and PAC-learning are both much more powerful than they have been believed. We illustrate an application of our theoretical results to Molecular Biology.

20 citations


Cited by
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Journal ArticleDOI
TL;DR: This paper surveys existing work on decision tree construction, attempting to identify the important issues involved, directions the work has taken and the current state of the art.
Abstract: Decision trees have proved to be valuable tools for the description, classification and generalization of data. Work on constructing decision trees from data exists in multiple disciplines such as statistics, pattern recognition, decision theory, signal processing, machine learning and artificial neural networks. Researchers in these disciplines, sometimes working on quite different problems, identified similar issues and heuristics for decision tree construction. This paper surveys existing work on decision tree construction, attempting to identify the important issues involved, directions the work has taken and the current state of the art.

1,044 citations

Journal ArticleDOI
TL;DR: This work has succeeded in finding rules whose prediction accuracies come close to that of TargetP, while still retaining a very simple and interpretable form.
Abstract: Motivation: The prediction of localization sites of various proteins is an important and challenging problem in the field of molecular biology. TargetP, by Emanuelsson et al. (J. Mol. Biol., 300, 1005‐1016, 2000) is a neural network based system which is currently the best predictor in the literature for N-terminal sorting signals. One drawback of neural networks, however, is that it is generally difficult to understand and interpret how and why they make such predictions. In this paper, we aim to generate simple and interpretable rules as predictors, and still achieve a practical prediction accuracy. We adopt an approach which consists of an extensive search for simple rules and various attributes which is partially guided by human intuition. Results: We have succeeded in finding rules whose prediction accuracies come close to that of TargetP, while still retaining a very simple and interpretable form. We also discuss and interpret the discovered rules. Availability: An (experimental) web service using rules obtained by our method is provided at http:

721 citations

Book
06 Apr 1995
TL;DR: In providing an up-to-date survey of parallel computing research from 1994, Topics in Parallel Computing will prove invaluable to researchers and professionals with an interest in the super computers of the future.
Abstract: This volume provides an ideal introduction to key topics in parallel computing. With its cogent overview of the essentials of the subject as well as lists of P -complete- and open problems, extensive remarks corresponding to each problem, a thorough index, and extensive references, the book will prove invaluable to programmers stuck on problems that are particularly difficult to parallelize. In providing an up-to-date survey of parallel computing research from 1994, Topics in Parallel Computing will prove invaluable to researchers and professionals with an interest in the super computers of the future.

533 citations

Proceedings Article
25 Jan 2015
TL;DR: The reader's attention is drawn to machine teaching, the problem of finding an optimal training set given a machine learning algorithm and a target model, and the Socratic dialogue style aims to stimulate critical thinking.
Abstract: I draw the reader's attention to machine teaching, the problem of finding an optimal training set given a machine learning algorithm and a target model. In addition to generating fascinating mathematical questions for computer scientists to ponder, machine teaching holds the promise of enhancing education and personnel training. The Socratic dialogue style aims to stimulate critical thinking.

233 citations