Published 2024 | Version v1
Dataset Open

Generativity and Profitability on B2B Innovation Platforms: A Simulation-based Theory Development

  • 1. Geneva School of Business Administration (HES-SO, HEG Genève)
  • 2. McCombs School of Business, University of Texas at Austin
  • 3. Geneva School of Social Science, University of Geneva
  • 4. Model Holding AG
  • 5. School of Computer Science, University of St.Gallen
  • 6. Institute of Information Management, University of St.Gallen

Description

This registry includes three documents with helpful information about our simulation model and the data it generates:

  1. Pseudocode: This document displays the pseudocode of our simulation model.
  2. Data: In this document, you will find all the data generated from 264,600 simulation runs (see Table 2 in the paper). The data is created using the model's baseline values for all its components (see the third column in Appendix A of the paper).
  3. Sensitivity Analysis: This document provides the generated data for sensitivity analysis, including all the tested values for the model's components (see the fourth column in Appendix A of the paper). Unlike the Data file (see Table 2 in the paper), in the Sensitivity Analysis, we only tested specific values of experimentally manipulated variables to avoid computational burdens for the simulation.
    • We tested low (= 5), medium (= 11), and high (= 16) levels of complexity of market opportunities (CMO).
    • We tested production mechanisms (TM) and transaction mechanisms (TM) from 0.1 to 0.9 in intervals of 0.1.


NOTE: Transparency materials are provided for the benefit of readers. MISQ’s responsibilities are limited to ensuring that the minimum materials required for transparency are provided and that the materials are organized and presented in a high-quality manner (see: https://misq.umn.edu/research-transparency). The materials are not subject to peer review and MISQ bears no responsibility for their use.

Files

Data.csv

Files (222.1 MB)

Name Size Download all
md5:25f1596b124813a45a13dd5ebef117b5
123.4 MB Preview Download
md5:40a32b6f5ee845204cfb6b5a44aadc4d
92.0 kB Preview Download
md5:652c3fa45dd7c3fd7a4f25d64fe1547a
98.6 MB Preview Download

Additional details

Dates

Accepted
2023