giannotti
Can Europe lead the way in AI?
The EU risks being left behind in AI, as it was in the social media revolution. This suggestion was made by Rony Medaglia, professor at Copenhagen Business School, at a workshop yesterday in Dubai (16 March), which showcased leading European healthcare AI projects as well as the EU's approach to AI. The block missed out on the innovations of social media and failed to play a leading role, a position held by North America and Asia, Medaglia argued, saying that now is the time for the EU to leverage its value-based approach. "Europe is always the one that comes and gives fines to the ones who break trust," he said. But it needs to be a player.
Benchmarking and Survey of Explanation Methods for Black Box Models
Bodria, Francesco, Giannotti, Fosca, Guidotti, Riccardo, Naretto, Francesca, Pedreschi, Dino, Rinzivillo, Salvatore
The widespread adoption of black-box models in Artificial Intelligence has enhanced the need for explanation methods to reveal how these obscure models reach specific decisions. Retrieving explanations is fundamental to unveil possible biases and to resolve practical or ethical issues. Nowadays, the literature is full of methods with different explanations. We provide a categorization of explanation methods based on the type of explanation returned. We present the most recent and widely used explainers, and we show a visual comparison among explanations and a quantitative benchmarking.
Opening the 'black box' of artificial intelligence
Artificial intelligence is growing ever more powerful and entering people's daily lives, yet often we don't know what goes on inside these systems. Their non-transparency could fuel practical problems, or even racism, which is why researchers increasingly want to open this'black box' and make AI explainable. When decisions are made by artificial intelligence, it can be difficult for the end user to understand the reasoning behind them. In February of 2013, Eric Loomis was driving around in the small town of La Crosse in Wisconsin, US, when he was stopped by the police. The car he was driving turned out to have been involved in a shooting, and he was arrested.
Opening the 'black box' of artificial intelligence
Artificial intelligence is growing ever more powerful and entering people's daily lives, yet often we don't know what goes on inside these systems. Their non-transparency could fuel practical problems, or even racism, which is why researchers increasingly want to open this'black box' and make AI explainable. In February of 2013, Eric Loomis was driving around in the small town of La Crosse in Wisconsin, US, when he was stopped by the police. The car he was driving turned out to have been involved in a shooting, and he was arrested. Eventually a court sentenced him to six years in prison.
Opening the 'Black Box' of Artificial Intelligence
In February of 2013, Eric Loomis was driving around in the small town of La Crosse in Wisconsin, US, when he was stopped by the police. The car he was driving turned out to have been involved in a shooting, and he was arrested. Eventually a court sentenced him to six years in prison. This might have been an uneventful case, had it not been for a piece of technology that had aided the judge in making the decision. They used COMPAS, an algorithm that determines the risk of a defendant becoming a recidivist.