Assessing knowledge assets: a review of the models used to measure intellectual capital
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Abstract
This paper reviews the literature pertaining to the assessment of knowledge assets. Since knowledge assets are at the crux of sustainable competitive advantage, the burgeoning field of intellectual capital is an exciting area for both researchers and practitioners. Unfortunately, the measurement of such intangible assets is difficult. A variety of models have surfaced in an attempt to measure IC and this paper aims to highlight their strengths, weaknesses and operationalizations.
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The record
- Venue
- International Journal of Management Reviews
- Topic
- Intellectual Capital and Performance Analysis
- Field
- Business, Management and Accounting
- Canadian institutions
- McMaster University
- Funders
- —
- Keywords
- Intellectual capitalMeasure (data warehouse)Variety (cybernetics)Strengths and weaknessesBusinessField (mathematics)Knowledge managementCompetitive advantageCapital (architecture)MarketingFinanceComputer sciencePsychology
- Has abstract in OpenAlex
- yes