Article ID Journal Published Year Pages File Type
9735119 The Journal of High Technology Management Research 2005 15 Pages PDF
Abstract
The relationship among various technologies has been a major research theme in high-tech management and thus investigated from several approaches. However, the relationship among product attributes has been ignored chiefly due to product complexities. The dynamic relationship among product attributes is important in terms of both finding product drivers and generating new ideas. Nevertheless, previous approaches have either remained purely conceptual or been conducted case-by-case. In practice, although they have contributed considerably to the product concept generation, uncertainty and risk still remain to a great extent. In this research, we will suggest an exploratory method to bridge the gap between these two approaches. To begin with, focusing on the mobile phone product range by Nokia, user guides and manuals are collected. Then, we build four sets of time-series data using text mining under the guidance of the hierarchy of product attributes composed of three layers. A vector autoregression (VAR) model, usually applied to examine causal relationship among economic time-series variables, is employed to analyze the data and investigate the dynamic causal relationship among product attributes. Applying variance decomposition and impulse-response function, the main product drivers, emerging features and actively interacting sets of attributes are identified, along with the three layers of the hierarchy. Four hypotheses on dynamic relationship among product attributes are also developed and tested to clarify fundamental characteristics.
Related Topics
Social Sciences and Humanities Business, Management and Accounting Management of Technology and Innovation
Authors
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