In this paper we argue that transparency of machine learning algorithms, just as explanation, can be defined at different levels of abstraction. We criticize recent attempts to identify the explanation of black box algorithms with making their decisions (post-hoc) interpretable, focusing our discussion on counterfactual explanations. These approaches to explanation simplify the real nature of the black boxes and risk misleading the public about the normative features of a model. We propose a new form of algorithmic transparency, that consists in explaining algorithms as an intentional product, that serves a particular goal, or multiple goals (Daniel Dennet's design stance) in a given domain of applicability, and that provides a measure of t...
In their article 'Who is afraid of black box algorithms? On the epistemological and ethical basis of...
Part 2: Social Implications of Algorithmic PhenomenaInternational audienceIn recent years the volume...
The requirements of transparency or explainability draw considerable attention in AI ethics. Still, ...
In this paper we argue that transparency of machine learning algorithms, just as explanation, can be...
We are sceptical of concerns over the opacity of algorithmic decision tools. While transparency and ...
Big data and data science transform organizational decision-making. We increasingly defer decisions ...
This dissertation seeks to clarify and resolve a number of fundamental issues surrounding algorithmi...
Algorithms, particularly machine learning (ML) algorithms, are increasingly important to individuals...
Machine-learning algorithms are improving and automating important functions in medicine, transporta...
Purpose The purpose of this paper is to report on empirical work conducted to open up algorithmic i...
In recent years, significant concerns have arisen regarding the increasing pervasiveness of algorith...
With algorithm-based technology becoming increasingly omnipresent, concerns about the often-opaque n...
AbstractIn the late 2010s, various international committees, expert groups, and national strategy bo...
In recent years, significant concerns have arisen regarding the increasing pervasiveness of algorith...
Sofia Olhede and Russell Rodrigues discuss recent efforts to ensure greater scrutiny of machine-gene...
In their article 'Who is afraid of black box algorithms? On the epistemological and ethical basis of...
Part 2: Social Implications of Algorithmic PhenomenaInternational audienceIn recent years the volume...
The requirements of transparency or explainability draw considerable attention in AI ethics. Still, ...
In this paper we argue that transparency of machine learning algorithms, just as explanation, can be...
We are sceptical of concerns over the opacity of algorithmic decision tools. While transparency and ...
Big data and data science transform organizational decision-making. We increasingly defer decisions ...
This dissertation seeks to clarify and resolve a number of fundamental issues surrounding algorithmi...
Algorithms, particularly machine learning (ML) algorithms, are increasingly important to individuals...
Machine-learning algorithms are improving and automating important functions in medicine, transporta...
Purpose The purpose of this paper is to report on empirical work conducted to open up algorithmic i...
In recent years, significant concerns have arisen regarding the increasing pervasiveness of algorith...
With algorithm-based technology becoming increasingly omnipresent, concerns about the often-opaque n...
AbstractIn the late 2010s, various international committees, expert groups, and national strategy bo...
In recent years, significant concerns have arisen regarding the increasing pervasiveness of algorith...
Sofia Olhede and Russell Rodrigues discuss recent efforts to ensure greater scrutiny of machine-gene...
In their article 'Who is afraid of black box algorithms? On the epistemological and ethical basis of...
Part 2: Social Implications of Algorithmic PhenomenaInternational audienceIn recent years the volume...
The requirements of transparency or explainability draw considerable attention in AI ethics. Still, ...