Data Science Techniques in Knowledge-Intensive Business Processes: A Collection of Use Cases for Investment Banking

Autor: Lederer, Matthias, Riedl, Joanna
Zdroj: International Journal of Data Analytics (IJDA); January 2020, Vol. 1 Issue: 1 p52-67, 16p
Abstrakt: The processes of an investment bank are considered to be particularly knowledge-intensive, because analysts need to extract or generate relevant knowledge from a variety of data. With increasing digitization, modern data science and business intelligence techniques are available to support or partially automate these activities. This study presents concrete use cases for front office processes of an investment bank as how knowledge management techniques can be used. For example, the article describes how expert systems can be used in the due diligence review or how fuzzy logic systems help in deciding whether to buy or sell securities. The article is based on 1079 texts (e.g. documented cases and articles) and serves researchers as well as practitioners as an application overview of data science techniques in the example area of knowledge-intensive banking processes.
Databáze: Supplemental Index