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 algorithmic error


UN fails to agree on 'killer robot' ban as nations pour billions into autonomous weapons research

Robohub

Humanitarian groups have been calling for a ban on autonomous weapons. Autonomous weapon systems – commonly known as killer robots – may have killed human beings for the first time ever last year, according to a recent United Nations Security Council report on the Libyan civil war. History could well identify this as the starting point of the next major arms race, one that has the potential to be humanity's final one. The United Nations Convention on Certain Conventional Weapons debated the question of banning autonomous weapons at its once-every-five-years review meeting in Geneva Dec. 13-17, 2021, but didn't reach consensus on a ban. Established in 1983, the convention has been updated regularly to restrict some of the world's cruelest conventional weapons, including land mines, booby traps and incendiary weapons.


Demographic skews in training data create algorithmic errors

#artificialintelligence

ALGORITHMIC BIAS is often described as a thorny technical problem. Machine-learning models can respond to almost any pattern--including ones that reflect discrimination. Their designers can explicitly prevent such tools from consuming certain types of information, such as race or sex. Nonetheless, the use of related variables, like someone's address, can still cause models to perpetuate disadvantage. Ironing out all traces of bias is a daunting task. Yet despite the growing attention paid to this problem, some of the lowest-hanging fruit remains unpicked.