著者
杉本 雅則 堀 浩一 大須賀 節雄
出版者
社団法人人工知能学会
雑誌
人工知能学会誌 (ISSN:09128085)
巻号頁・発行日
vol.8, no.5, pp.575-582, 1993-09-01
被引用文献数
35

In this paper, we present a system to support design work which is one of the human creative activities. We have applied the system to the domain of automobile design. Conceptual design work of automobile has two phases. In the first phase, each designer builds a new design concept. In the second phase, designers decide a target design concept among their concepts. The system first analyzes existing automobile data statistically and visualize the result in a metric space. In conventional statistical analysis, we give some interpretation to the result. But in our system, the statistical method is used for the different purpose. The system shows its user the space to trigger his/her concept building. The user builds a new design concept by reconfiguring the space. The concept is saved in the database, and when designer group decide their target concept, the system analyzes the database and assists their decision making. Through the experiments, we have got a clue to consider the phenomenon of concept formation process. Based on it, we propose a model of concept formation process. We have confirmed that the system is useful for conceptual design work. The designer of an automobile company said that it is interesting and is effective to promote conceptual design work.
著者
小林 重信
出版者
社団法人人工知能学会
雑誌
人工知能学会誌 (ISSN:09128085)
巻号頁・発行日
vol.18, no.4, pp.439-451, 2003-07-01
被引用文献数
7
著者
木村 元 山村 雅幸 小林 重信
出版者
社団法人人工知能学会
雑誌
人工知能学会誌 (ISSN:09128085)
巻号頁・発行日
vol.11, no.5, pp.761-768, 1996-09-01
被引用文献数
60

Many conventional works in reinforcement learning are limited to Markov decision processes (MDPs). However, real world decision tasks are essentially non-Markovian. In this paper, we consider reinforcement learning in partially observable MDPs(POMDPs) that is a class of non-Markovian decision problems. In POMDPs assumption, the environment is MDP, but an agent has restricted access to state information. Instead, the agent receives observation containing some information about states of the MDP. Also we focus on a learnig algorithm for memory-less stochastic policies that map the immediate observation of the agent into actions: The memory-less approaches are suited for on-line and real-time adaptive systems that have limited memory and computational resources. Then, the following mathematical results are got. First, it can improve its policy to maximize immediate reward by stochastic gradient ascent without estimating any state or immediate reward. Second, it can improve the policy to maximize discounted reward in an initial state by stochastic gradient ascent without estimating any state, immediate reward or discounted reward. The above advantages are remarkably effective in POMDPs, because it is not required to estimate any states, immediate reward or discounted reward explicitly. Making use of these results, we present an incremental policy improvement algorithm to maximize the average reward in POMDPs. We ensure the rational behavior of the proposed algorithm in a simple experiment.
著者
藤本 和則 賀沢 秀人 佐藤 浩史 阿部 明典 松澤 和光
出版者
社団法人人工知能学会
雑誌
人工知能学会誌 (ISSN:09128085)
巻号頁・発行日
vol.15, no.1, pp.61-64, 2000-01-01
被引用文献数
8

Decision Support for Internet Users, Called DSIU, is an area of research for providing decision support for Internet users by using information on the Internet. DSIU aims to provide decision support with logicalexplanation taking account of user's preference. By using information extraction techniques, DSIU handles the names of various substances, e.g., electronic products, persons, and places, and so on, and constructs the explanations in terms of their properties. This paper describes the DSIU particularly form a viewpoint of realizing the DSIU and giving contributions to society in the near future. The information of DSIU is available at http://www.kecl.ntt.co.jo/DSIU/.
著者
古崎 晃司 溝口 理一郎
出版者
社団法人人工知能学会
雑誌
人工知能学会誌 (ISSN:09128085)
巻号頁・発行日
vol.20, no.6, pp.707-714, 2005-11-01
被引用文献数
11
著者
山本 恭裕 高田 眞吾 中小路 久美代
出版者
社団法人人工知能学会
雑誌
人工知能学会誌 (ISSN:09128085)
巻号頁・発行日
vol.14, no.1, pp.82-92, 1999-01-01
被引用文献数
17

The goal of this study is to design and build a computer system to support the basic cognitive activity of "writing" in a more natural and effective manner. The paper starts with a description of a writing process, followed by an overview of existing models on writing. Then, the notion of "Representational Talkback" is proposed as an important aspect in supporting collage-style writing. Representational Talkback is defined as "feedback from externally represented artifacts." The ART (Amplifying Representational Talkback) system is implemented based on this notion, focusing on the role of meta-comments in writing. The goal of the system is twofold : (1) to support collage-style writing of a document, and (2) to observe how people "write" using ART. The paper concludes with a discussion of the result of a study on how people "write" using ART with an eye towards extending the notion to other types of cognitive activities.