The significance and abundance of data are increasing due to the growing digital data generated from social media, sensors, scholarly literature, patents, different forms of documents published online, databases, product manuals, etc. Various data sources can be used to generate ideas, yet, in addition to bias, the size of the available digital data is a major challenge when it comes to manual analysis. Hence, human-machine interaction is essential for generating valuable ideas where machine learning and data-driven techniques generate patterns from data and serve human sense-making. However, the use of machine learning and data-driven approaches to generate ideas is a relatively new area. Moreover, it is also possible to stimulate innovation using contest-driven idea generation and evaluation. The results and contributions of this thesis can be viewed as a toolbox of idea-generation techniques, including a list of data-driven and machine learning techniques with corresponding data sources and models to support idea generation. In addition, the results include two models, one method and one framework, to better support data-driven and contest- driven idea generation. The beneficiaries of these artefacts are practitioners in data and knowledge engineering, data mining project managers, and innovation agents. Innovation agents include incubators, contest organizers, consultants, innovation accelerators, and industries. Since the proposed artefacts consist of process models augmented with AI techniques, human-centred AI is a promising area of research that can contribute to the artefacts' further development and promote creativity.
翻译:由于社交媒体、传感器、学术文献、专利、在线出版文件的不同形式、数据库、产品手册等产生的数字数据越来越多,数据的重要性和丰度正在增加。 各种数据来源可以用来产生想法,但是,除了偏差外,现有数字数据的规模也是手工分析方面的一大挑战。因此,在机器学习和数据驱动技术产生数据模式和为人类感知创造服务方面,人与机器的互动对于创造宝贵想法至关重要。然而,使用机器学习和数据驱动方法产生想法是一个相对较新的领域。此外,利用竞争驱动的创意生成和评价也可以刺激创新。这一论文的结果和贡献可被视为产生想法技术的工具箱,包括数据驱动和机器学习技术以及相应数据来源和模型的清单,以支持生成想法。此外,结果包括两种模型、一种方法和一个框架,以更好地支持数据驱动和竞争性驱动的创意生成。这些工艺品的受益者是数据和知识工程从业人员、数据采矿项目管理员和创新代理商。该论文的结果和贡献可视为产生创意的技术的工具箱,包括数据驱动力和机能开发领域。