Self Modelling Knowledge Networks
نویسندگان
چکیده
The necessity for managing knowledge is stressed by wide array of recent publications ranging from information science to strategic management substantiating their proposition with the tremendous changes in the context organisations that are operating today. Although knowledge management (KM) literature and research projects are increasingly extending their attention from intra-organisational to inter-organisational aspects (e.g.,
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