This article asks the question, ``what is reliable machine learning?'' As I intend to answer it, this is a question about epistemic justification. Reliable machine learning gives justification for believing its output. Current approaches to reliability (e.g., transparency) involve showing the inner workings of an algorithm (functions, variables, etc.) and how they render outputs. We then have justification for believing the output because we know how it was computed. Thus, justification is contingent on what can be shown about the algorithm, its properties, and its behavior. In this paper, I defend computational reliabilism (CR). CR is a computationally-inspired off-shoot of process reliabilism that does not require showing the inner workin...
The paper addresses some fundamental and hotly debated issues for high-stakes event predictions unde...
As our epistemic ambitions grow, the common and scientific endeavours are becoming increasingly depe...
Modern machine learning (ML) algorithms are being applied today to a rapidly increasing number of ta...
This article asks the question, ``what is reliable machine learning?'' As I intend to answer it, thi...
With the advent of Deep Learning, the field of machine learning (ML) has surpassed human-level perfo...
Deep learning (DL) has become increasingly central to science, primarily due to its capacity to quic...
The explainable AI literature contains multiple notions of what an explanation is and what desiderat...
In research fields with complex scientific and technical infrastructures that generate large volumes...
In this paper, I outline and investigate the notion of computational beliefs: beliefs formed on the ...
This dissertation seeks to clarify and resolve a number of fundamental issues surrounding algorithmi...
How and when can we depend on machine learning systems to make decisions for human-being? This is pr...
The field of machine learning has flourished over the past couple of decades. With huge amounts of d...
The ability to replicate predictions by machine learning (ML) or artificial intelligence (AI) models...
Several philosophical issues in connection with computer simulations rely on the assumption that res...
This is a pre-copyedited, author-produced version of an article accepted for publication in Schizoph...
The paper addresses some fundamental and hotly debated issues for high-stakes event predictions unde...
As our epistemic ambitions grow, the common and scientific endeavours are becoming increasingly depe...
Modern machine learning (ML) algorithms are being applied today to a rapidly increasing number of ta...
This article asks the question, ``what is reliable machine learning?'' As I intend to answer it, thi...
With the advent of Deep Learning, the field of machine learning (ML) has surpassed human-level perfo...
Deep learning (DL) has become increasingly central to science, primarily due to its capacity to quic...
The explainable AI literature contains multiple notions of what an explanation is and what desiderat...
In research fields with complex scientific and technical infrastructures that generate large volumes...
In this paper, I outline and investigate the notion of computational beliefs: beliefs formed on the ...
This dissertation seeks to clarify and resolve a number of fundamental issues surrounding algorithmi...
How and when can we depend on machine learning systems to make decisions for human-being? This is pr...
The field of machine learning has flourished over the past couple of decades. With huge amounts of d...
The ability to replicate predictions by machine learning (ML) or artificial intelligence (AI) models...
Several philosophical issues in connection with computer simulations rely on the assumption that res...
This is a pre-copyedited, author-produced version of an article accepted for publication in Schizoph...
The paper addresses some fundamental and hotly debated issues for high-stakes event predictions unde...
As our epistemic ambitions grow, the common and scientific endeavours are becoming increasingly depe...
Modern machine learning (ML) algorithms are being applied today to a rapidly increasing number of ta...