Fuzzy regression model of R&D project evaluation

Shinji Imoto, Yoshiyuki Yabuuchi, Junzo Watada

    Research output: Contribution to journalArticle

    23 Citations (Scopus)

    Abstract

    Engineering and technology play an important role in strengthening the competitive power of a company and in surviving a severe competition in the world. About 70% of the total R&D investment in Japan comes from the private sector. It is the most important to decide which research projects have to be adopted for a future research out of proposals from divisions and sections in a company. The objective of this paper is to analyze the results of experts' evaluation in selecting submitted proposals for R&D and to model the experts' evaluation. This paper analyzes a research and development of a certain manufacturing company in a heavy metallurgy industry. We employed a principal component model, dual scaling, AHP and fuzzy regression analysis to analyze the results that experts evaluated proposed research projects for single or plural of fiscal years. The experts' evaluation was pursued on the basis of (1) the objective of a research project, (2) its background, (3) its research contents, (4) the expected effect, (5) the possibility of obtaining patents, (6) project schedule, (7) developing cost, etc. The obtained model results in the same selection of projects as the experts did.

    Original languageEnglish
    Pages (from-to)1266-1273
    Number of pages8
    JournalApplied Soft Computing Journal
    Volume8
    Issue number3
    DOIs
    Publication statusPublished - 2008 Jun

    Fingerprint

    Industry
    Metallurgy
    Regression analysis
    Costs

    Keywords

    • AHP
    • Fuzzy regression model
    • Management of technology and engineering
    • Project management
    • R&D

    ASJC Scopus subject areas

    • Software
    • Computer Science Applications
    • Artificial Intelligence

    Cite this

    Fuzzy regression model of R&D project evaluation. / Imoto, Shinji; Yabuuchi, Yoshiyuki; Watada, Junzo.

    In: Applied Soft Computing Journal, Vol. 8, No. 3, 06.2008, p. 1266-1273.

    Research output: Contribution to journalArticle

    Imoto, Shinji ; Yabuuchi, Yoshiyuki ; Watada, Junzo. / Fuzzy regression model of R&D project evaluation. In: Applied Soft Computing Journal. 2008 ; Vol. 8, No. 3. pp. 1266-1273.
    @article{df4e06cbcb4f47599255d81a81b7dfb9,
    title = "Fuzzy regression model of R&D project evaluation",
    abstract = "Engineering and technology play an important role in strengthening the competitive power of a company and in surviving a severe competition in the world. About 70{\%} of the total R&D investment in Japan comes from the private sector. It is the most important to decide which research projects have to be adopted for a future research out of proposals from divisions and sections in a company. The objective of this paper is to analyze the results of experts' evaluation in selecting submitted proposals for R&D and to model the experts' evaluation. This paper analyzes a research and development of a certain manufacturing company in a heavy metallurgy industry. We employed a principal component model, dual scaling, AHP and fuzzy regression analysis to analyze the results that experts evaluated proposed research projects for single or plural of fiscal years. The experts' evaluation was pursued on the basis of (1) the objective of a research project, (2) its background, (3) its research contents, (4) the expected effect, (5) the possibility of obtaining patents, (6) project schedule, (7) developing cost, etc. The obtained model results in the same selection of projects as the experts did.",
    keywords = "AHP, Fuzzy regression model, Management of technology and engineering, Project management, R&D",
    author = "Shinji Imoto and Yoshiyuki Yabuuchi and Junzo Watada",
    year = "2008",
    month = "6",
    doi = "10.1016/j.asoc.2007.02.024",
    language = "English",
    volume = "8",
    pages = "1266--1273",
    journal = "Applied Soft Computing",
    issn = "1568-4946",
    publisher = "Elsevier BV",
    number = "3",

    }

    TY - JOUR

    T1 - Fuzzy regression model of R&D project evaluation

    AU - Imoto, Shinji

    AU - Yabuuchi, Yoshiyuki

    AU - Watada, Junzo

    PY - 2008/6

    Y1 - 2008/6

    N2 - Engineering and technology play an important role in strengthening the competitive power of a company and in surviving a severe competition in the world. About 70% of the total R&D investment in Japan comes from the private sector. It is the most important to decide which research projects have to be adopted for a future research out of proposals from divisions and sections in a company. The objective of this paper is to analyze the results of experts' evaluation in selecting submitted proposals for R&D and to model the experts' evaluation. This paper analyzes a research and development of a certain manufacturing company in a heavy metallurgy industry. We employed a principal component model, dual scaling, AHP and fuzzy regression analysis to analyze the results that experts evaluated proposed research projects for single or plural of fiscal years. The experts' evaluation was pursued on the basis of (1) the objective of a research project, (2) its background, (3) its research contents, (4) the expected effect, (5) the possibility of obtaining patents, (6) project schedule, (7) developing cost, etc. The obtained model results in the same selection of projects as the experts did.

    AB - Engineering and technology play an important role in strengthening the competitive power of a company and in surviving a severe competition in the world. About 70% of the total R&D investment in Japan comes from the private sector. It is the most important to decide which research projects have to be adopted for a future research out of proposals from divisions and sections in a company. The objective of this paper is to analyze the results of experts' evaluation in selecting submitted proposals for R&D and to model the experts' evaluation. This paper analyzes a research and development of a certain manufacturing company in a heavy metallurgy industry. We employed a principal component model, dual scaling, AHP and fuzzy regression analysis to analyze the results that experts evaluated proposed research projects for single or plural of fiscal years. The experts' evaluation was pursued on the basis of (1) the objective of a research project, (2) its background, (3) its research contents, (4) the expected effect, (5) the possibility of obtaining patents, (6) project schedule, (7) developing cost, etc. The obtained model results in the same selection of projects as the experts did.

    KW - AHP

    KW - Fuzzy regression model

    KW - Management of technology and engineering

    KW - Project management

    KW - R&D

    UR - http://www.scopus.com/inward/record.url?scp=40849124011&partnerID=8YFLogxK

    UR - http://www.scopus.com/inward/citedby.url?scp=40849124011&partnerID=8YFLogxK

    U2 - 10.1016/j.asoc.2007.02.024

    DO - 10.1016/j.asoc.2007.02.024

    M3 - Article

    AN - SCOPUS:40849124011

    VL - 8

    SP - 1266

    EP - 1273

    JO - Applied Soft Computing

    JF - Applied Soft Computing

    SN - 1568-4946

    IS - 3

    ER -