Purpose The purpose of this paper is to report on empirical work conducted to open up algorithmic interpretability and transparency. In recent years, significant concerns have arisen regarding the increasing pervasiveness of algorithms and the impact of automated decision-making in our lives. Particularly problematic is the lack of transparency surrounding the development of these algorithmic systems and their use. It is often suggested that to make algorithms more fair, they should be made more transparent, but exactly how this can be achieved remains unclear. Design/methodology/approach An empirical study was conducted to begin unpacking issues around algorithmic interpretability and transparency. The study involved discussion-based exp...
Algorithms can now identify patterns and correlations in the (big) datasets, and predict outcomes ba...
How is algorithmic model interpretability related to human acceptance of algorithmic recommendations...
We are sceptical of concerns over the opacity of algorithmic decision tools. While transparency and ...
In recent years, significant concerns have arisen regarding the increasing pervasiveness of algorith...
In recent years, significant concerns have arisen regarding the increasing pervasiveness of algorith...
Although algorithmic decision support is omnipresent in many managerial tasks, a lack of algorithm t...
International audienceFairness of algorithms is the subject of a large body of literature, of guides...
Part 2: Social Implications of Algorithmic PhenomenaInternational audienceIn recent years the volume...
Sofia Olhede and Russell Rodrigues discuss recent efforts to ensure greater scrutiny of machine-gene...
Our daily digital life is full of algorithmically selected content such as social media feeds, recom...
Big data and data science transform organizational decision-making. We increasingly defer decisions ...
The combination of increased availability of large amounts of fine-grained human behavioral data and...
In this paper we argue that transparency of machine learning algorithms, just as explanation, can be...
It has been long acknowledged that computational prediction procedures may yield more accurate predi...
Today, many organizations use personal data and algorithms for ads, recommendations, and decisions. ...
Algorithms can now identify patterns and correlations in the (big) datasets, and predict outcomes ba...
How is algorithmic model interpretability related to human acceptance of algorithmic recommendations...
We are sceptical of concerns over the opacity of algorithmic decision tools. While transparency and ...
In recent years, significant concerns have arisen regarding the increasing pervasiveness of algorith...
In recent years, significant concerns have arisen regarding the increasing pervasiveness of algorith...
Although algorithmic decision support is omnipresent in many managerial tasks, a lack of algorithm t...
International audienceFairness of algorithms is the subject of a large body of literature, of guides...
Part 2: Social Implications of Algorithmic PhenomenaInternational audienceIn recent years the volume...
Sofia Olhede and Russell Rodrigues discuss recent efforts to ensure greater scrutiny of machine-gene...
Our daily digital life is full of algorithmically selected content such as social media feeds, recom...
Big data and data science transform organizational decision-making. We increasingly defer decisions ...
The combination of increased availability of large amounts of fine-grained human behavioral data and...
In this paper we argue that transparency of machine learning algorithms, just as explanation, can be...
It has been long acknowledged that computational prediction procedures may yield more accurate predi...
Today, many organizations use personal data and algorithms for ads, recommendations, and decisions. ...
Algorithms can now identify patterns and correlations in the (big) datasets, and predict outcomes ba...
How is algorithmic model interpretability related to human acceptance of algorithmic recommendations...
We are sceptical of concerns over the opacity of algorithmic decision tools. While transparency and ...