In this paper we introduce the problem of algorithmic opacity and the challenges it presents to ethical decision-making in criminal intelligence analysis. Machine learning algorithms have played important roles in the decision-making process over the past decades. Intelligence analysts are increasingly being presented with smart black box automation that use machine learning algorithms to find patterns or interesting and unusual occurrences in big data sets. Algorithmic opacity is the lack visibility of computational processes such that humans are not able to inspect its inner workings to ascertain for themselves how the results and conclusions were computed. This is a problem that leads to several ethical issues. In the VALCRI project, we ...
Artificial intelligence and machine learning represent powerful tools in many fields, ranging from c...
As artificial intelligence and big data analytics increasingly replace human decision making, ...
Criminal investigations involve repetitive information retrieval requests in high risk, high consequ...
Advancements in machine learning have fuelled the popularity of using AI decision algorithms in proc...
A common criticism of the use of algorithms in criminal justice is that algorithms and their determi...
Algorithms occupy a central place in the current debates on the ethics of computing. The term “algor...
Decision-making on numerous aspects of our daily lives is being outsourced to machine-learning algor...
The ongoing explosion of interest in artificial intelligence is fueled in part by recently developed...
To make evaluations about the morally relevant impacts of algorithms, transparency is needed. This p...
The paper dissects the intricacies of automated decision making (ADM) and urges for refining the cur...
The combination of increased availability of large amounts of fine-grained human behavioral data and...
n the hopes of making law enforcement more effective and efficient, police and intelligence analysts...
The growing use of Machine Learning (ML) algorithms in many application domains such as healthcare, ...
A lack of algorithmic transparency is a major barrier to the adoption of artificial intelligence tec...
On October 20, 2022, Dr. Ryan Prox, S/Constable-in-Charge of the Crime Analytics Advisory & Deve...
Artificial intelligence and machine learning represent powerful tools in many fields, ranging from c...
As artificial intelligence and big data analytics increasingly replace human decision making, ...
Criminal investigations involve repetitive information retrieval requests in high risk, high consequ...
Advancements in machine learning have fuelled the popularity of using AI decision algorithms in proc...
A common criticism of the use of algorithms in criminal justice is that algorithms and their determi...
Algorithms occupy a central place in the current debates on the ethics of computing. The term “algor...
Decision-making on numerous aspects of our daily lives is being outsourced to machine-learning algor...
The ongoing explosion of interest in artificial intelligence is fueled in part by recently developed...
To make evaluations about the morally relevant impacts of algorithms, transparency is needed. This p...
The paper dissects the intricacies of automated decision making (ADM) and urges for refining the cur...
The combination of increased availability of large amounts of fine-grained human behavioral data and...
n the hopes of making law enforcement more effective and efficient, police and intelligence analysts...
The growing use of Machine Learning (ML) algorithms in many application domains such as healthcare, ...
A lack of algorithmic transparency is a major barrier to the adoption of artificial intelligence tec...
On October 20, 2022, Dr. Ryan Prox, S/Constable-in-Charge of the Crime Analytics Advisory & Deve...
Artificial intelligence and machine learning represent powerful tools in many fields, ranging from c...
As artificial intelligence and big data analytics increasingly replace human decision making, ...
Criminal investigations involve repetitive information retrieval requests in high risk, high consequ...