The purpose of this article is twofold: first, we show how algorithms have become increasingly central to financial credit scoring; second, we draw on this to further develop the anthropological study of algorithmic governance. As such, we describe the literature on credit scoring and then discuss ethnographic examples from two regulatory and commercial contexts: the US and Denmark. From these empirical cases, we carve out main developments of algorithmic governance in credit scoring and elucidate social and cultural logics behind algorithmic governance tools. Our analytical framework builds on critical algorithm studies and anthropological studies where money and payment infrastructures are viewed as embedded in their specific cultural con...
Credit-score models provide one of the many contexts through which the big data micro-segmentation o...
Dissertation presented as the partial requirement for obtaining a Master's degree in Data Science a...
Credit reporting is a contested process whereby parties with distinct interests (borrowers, lenders,...
The purpose of this article is twofold: first, we show how algorithms have become increasingly centr...
PurposeThis paper aims to survey the credit scoring literature in the past 41 years (1976-2017) and ...
Award date: 15 June 2023Supervisor: Daniel Innerarity, European University InstituteThis paper explo...
The volume Credit scoring in context of interpretable machine learning presents a unique, and simult...
Tremendous growth in the credit industry has spurred the need for Credit Scoring and Its Application...
Algorithmic decision-making (ADM) systems increasingly take on crucial roles in our technology-drive...
For most Americans, access to credit is an essential requirement for upward mobility and financial s...
Credit scores can control housing decisions, the cost of taking out a loan, and even employment. The...
The system of credit scoring has been built up in recent times on the basis of a compromise struck b...
Algorithmic consumer credit scoring has caused anxiety among scholars and policy makers. After a sig...
Credit scoring is an automated exercise in predictive analytics deployed by retail lenders and their...
Big Data is increasingly mined to rank and rate individuals. Predictive algorithms assess whether we...
Credit-score models provide one of the many contexts through which the big data micro-segmentation o...
Dissertation presented as the partial requirement for obtaining a Master's degree in Data Science a...
Credit reporting is a contested process whereby parties with distinct interests (borrowers, lenders,...
The purpose of this article is twofold: first, we show how algorithms have become increasingly centr...
PurposeThis paper aims to survey the credit scoring literature in the past 41 years (1976-2017) and ...
Award date: 15 June 2023Supervisor: Daniel Innerarity, European University InstituteThis paper explo...
The volume Credit scoring in context of interpretable machine learning presents a unique, and simult...
Tremendous growth in the credit industry has spurred the need for Credit Scoring and Its Application...
Algorithmic decision-making (ADM) systems increasingly take on crucial roles in our technology-drive...
For most Americans, access to credit is an essential requirement for upward mobility and financial s...
Credit scores can control housing decisions, the cost of taking out a loan, and even employment. The...
The system of credit scoring has been built up in recent times on the basis of a compromise struck b...
Algorithmic consumer credit scoring has caused anxiety among scholars and policy makers. After a sig...
Credit scoring is an automated exercise in predictive analytics deployed by retail lenders and their...
Big Data is increasingly mined to rank and rate individuals. Predictive algorithms assess whether we...
Credit-score models provide one of the many contexts through which the big data micro-segmentation o...
Dissertation presented as the partial requirement for obtaining a Master's degree in Data Science a...
Credit reporting is a contested process whereby parties with distinct interests (borrowers, lenders,...