An Analysis and Improvement of Robo-Advisory
Autor/es
Tahvildari, MahanFecha
2026Disciplina/s
Administración y Dirección de EmpresasMateria/s
Asesoramiento robóticoAsesor robótico
Asesoramiento financiero
Perfil de inversor
Recomendación de cartera
ChatGPT
Inteligencia artificial
Análisis de rendimiento
COVID-19
Resumen
This dissertation examines and seeks to improve robo-advisory (RA) through an integrated analysis of German providers, a dynamic formal model of the workflow, an operational large-language-model (LLM) prototype, and a benchmark-consistent performance study. It tackles opacity in profiling and portfolios, the absence of a unified dynamic formalism, the lack of a scalable, auditable LLM-driven RA, and limited risk-matched evidence on realised outcomes. Six questions frame the work: RQ1–RQ2 on questionnaires, portfolios and strategies; RQ3 on a mathematical framework; RQ4 on a ChatGPT-4o-based RA; and RQ5–RQ6 on risk-adjusted performance overall and during COVID-19.
Methodologically, a July-2024 census of 45 German RAs is used to construct a profiling taxonomy validated with text analytics features and clustering. Holdings-based mapping is combined with structured analysis of strategy disclosures. A pragmatic two-layer catalogue—eleven equity cores with horizon/environmental, social, a...





