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Janice S. Aikins

Bio: Janice S. Aikins is an academic researcher from PARC. The author has contributed to research in topics: Expert system & Legal expert system. The author has an hindex of 1, co-authored 2 publications receiving 249 citations.

Papers
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Journal ArticleDOI
TL;DR: The assumptions of this organization are relaxed, one at a time, in case study of ten more sophisticated organizational prescriptions, which give techniques for dealing with unreliable data and time-varying data.

249 citations

Journal ArticleDOI
TL;DR: Aikins and Aikins as mentioned in this paper proposed a machine intelligence system for computer vision, which is based on the idea of machine learning and machine learning models from computer vision applications.

1 citations


Cited by
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Journal ArticleDOI
TL;DR: The results indicate that explanation facilities can make ES-generated advice more acceptable to users and that justification is the most effective type of explanation to bring about changes in user attitudes toward the system.
Abstract: Providing explanations for recommended actions is deemed one of the most important capabilities of expert systems (ES). There is little empirical evidence, however, that explanation facilities indeed influence user confidence in, and acceptance of, ES-based decisions and recommendations. This paper investigates the impact of ES explanations on changes in user beliefs toward ES-generated conclusions. Grounded on a theoretical model of argument, three alternative types of ES explanations A trace, justification, and strategy A were provided in a simulated diagnostic expert system performing auditing tasks. Twenty practicing auditors evaluated the outputs of the system in a laboratory setting. The results indicate that explanation facilities can make ES-generated advice more acceptable to users and that justification is the most effective type of explanation to bring about changes in user attitudes toward the system. These findings are expected to be generalizable to application domains that exhibit similar characteristics to those of auditing: domains in which decision making tends to be judgmental and yet highly consequential, and the correctness or validity of such decisions cannot be readily verified.

297 citations

Journal ArticleDOI
TL;DR: This paper introduces and defines the concept of a knowledge level model, comparing how the term is used today with Newell's original usage, and distinguishes two major types of knowledge level models: ontologies and problem solving models.
Abstract: We address the problem of highly varied and inconsistent usage of terms by the knowledge technology community in the area of knowledge-level modelling. It is arguably difficult or impossible for any standard set of terms and definitions to be agreed on. However, de facto standard usage is already emerging within and across certain segments of the community. This is very difficult to see, however, especially for newcomers to the field. It is the goal of this paper to identify and reflect the most common usage of terms as currently found in the literature. To this end, we introduce and define the concept of a knowledge level model, comparing how the term is used today with Newell's original usage. We distinguish two major types of knowledge level model: ontologies and problem solving models. We describe what an ontology is, what they may be used for and how they are represented. We distinguish various kinds of ontologies and define a number of additional related concepts. We describe what is meant by a problem solving model, what they are used for, and attempt to clarify some terminological confusion that exists in the literature. We define what is meant by the term ‘problem’, and some common notions used to characterise and represent problems. We introduce and describe the ideas of tasks, problem solving methods and a variety of other important related concepts.

224 citations

Book ChapterDOI
TL;DR: The problem of reasoning with incomplete or inexact information is discussed, as are several other issues regarding the design of expert systems.
Abstract: Rule-based expert systems are surveyed. The most important considerations are representation and inference. Rule-based systems make strong assumptions about the representation of knowledge as conditional sentences and about the control of inference in one of three ways. The problem of reasoning with incomplete or inexact information is also discussed, as are several other issues regarding the design of expert systems.

201 citations

Journal ArticleDOI
TL;DR: The fuzzy relational data base (FRDB) model presented in this paper is based on research in the fields of relational data bases and theories of fuzzy sets and possibility and is designed to satisfy the need for individualization and imprecise information processing.

169 citations

Journal ArticleDOI
TL;DR: In this article, the authors report the results of a study on the use of information and decision making by practicing marketing managers and examine the effect of managerial experience and decision programmabili...
Abstract: The authors report the results of a study on the use of information and decision making by practicing marketing managers. They examine the effect of managerial experience and decision programmabili...

160 citations