Computational Model Library

Strategy with Externalities (1.0.0)

The purpose of this model is to explore the effects of technological and social shifts on the behavior of incumbent and startup firms. The model was constructed to provide insight into the choices firms make regarding adoption of new energy technologies. A firm’s performance is determined by its location on an NK fitness landscape, and each firm’s strategy, or technology portfolio, is modeled as a string of bits which locate the firm on the landscape. Firms move along the landscape by modifying their strategies. The model explores how the performance landscape needs to shift in order for startups to become established and incumbents motivated to search for higher preforming strategies.

The conceptual space representing all possible firm strategies is described in terms of an NK model. Each strategy is represented as a string of N binary decisions, each of which is dependent on K other decisions within that same string. A firm’s performance, or value, is represented as an average of the contributions from each decision and its related decisions.

The model is based on two landscapes,old world and new world. To start a number of incumbent firms search for advantageous positions on the old world landscape. The landscape is then shifted and startup firms are added to the new world landscape. The two types of firms then search the new world landscape for advantageous positions.

Firms are instantiated with different levels of aspiration which are used to trigger search behaviour. If a firm’s relative performance is above their aspiration level it will not change its strategy, but when the performance drops below that threshold a firm will choose one of two search types: incremental or imitative. Each time period firms that fall below a specified relative performance are removed with a given probability.

Screen_Shot_2016-09-07_at_10.34.59_AM.png

Release Notes

version 6

Associated Publications

Strategy with Externalities 1.0.0

The purpose of this model is to explore the effects of technological and social shifts on the behavior of incumbent and startup firms. The model was constructed to provide insight into the choices firms make regarding adoption of new energy technologies. A firm’s performance is determined by its location on an NK fitness landscape, and each firm’s strategy, or technology portfolio, is modeled as a string of bits which locate the firm on the landscape. Firms move along the landscape by modifying their strategies. The model explores how the performance landscape needs to shift in order for startups to become established and incumbents motivated to search for higher preforming strategies.

The conceptual space representing all possible firm strategies is described in terms of an NK model. Each strategy is represented as a string of N binary decisions, each of which is dependent on K other decisions within that same string. A firm’s performance, or value, is represented as an average of the contributions from each decision and its related decisions.

The model is based on two landscapes,old world and new world. To start a number of incumbent firms search for advantageous positions on the old world landscape. The landscape is then shifted and startup firms are added to the new world landscape. The two types of firms then search the new world landscape for advantageous positions.

Firms are instantiated with different levels of aspiration which are used to trigger search behaviour. If a firm’s relative performance is above their aspiration level it will not change its strategy, but when the performance drops below that threshold a firm will choose one of two search types: incremental or imitative. Each time period firms that fall below a specified relative performance are removed with a given probability.

Release Notes

version 6

Version Submitter First published Last modified Status
1.0.0 J M Applegate Thu Dec 21 15:12:54 2017 Thu Dec 5 06:35:36 2024 Published Peer Reviewed DOI: 10.25937/dcsc-4k89

Discussion

This website uses cookies and Google Analytics to help us track user engagement and improve our site. If you'd like to know more information about what data we collect and why, please see our data privacy policy. If you continue to use this site, you consent to our use of cookies.
Accept