时间:2025-02-28 19:58:46 来源:网络整理编辑:焦點
If the past few years have taught us anything, it's that algorithms should not be blindly trusted.Th
If the past few years have taught us anything, it's that algorithms should not be blindly trusted.
The latest math-induced headache comes from Australia, where an automated compliance system appears to be issuing incorrect notices to some of Australia's most vulnerable people, asking them to prove they were entitled to past welfare benefits.
Politicians and community advocates have called foul on the system, rolled out by Australia's social services provider, Centrelink.
SEE ALSO:Facebook reveals how many times governments requested data in 2016Launched in July, the system was intended to streamline the detection of overpayments made to welfare recipients and automatically issue notices of any discrepancies.
The media and Reddit threads have since been inundated with complaints from people who say they are being accused of being "welfare cheats" without cause, thanks to faulty data.
The trouble lies with the algorithm's apparent difficulty accurately matching tax office data with Centrelink records, according to the Guardian, although department spokesperson Hank Jongen told Mashableit remains "confident" in the system.
"People have 21 days from the date of their letter to go online and update their information," he said. "The department is determined to ensure that people get what they are entitled to, nothing more, nothing less."
Independent politician Andrew Wilkie accused the "heavy-handed" system of terrifying the community.
The siren call of big data has proved irresistible to governments globally, provoking a rush to automate and digitise.
"My office is still being inundated with calls and emails from all around the country telling stories of how people have been deemed guilty until proven innocent and sent to the debt collectors immediately," he said in a statement in early December.
The situation is upsetting albeit unsurprising. The siren call of big data has proved irresistible to governments globally, provoking a rush to automate and digitise.
What these politicians seem to like, above all, is that such algorithms promise speed and less man hours.
Alan Tudge, the minister for human services, proudly announcedthat Centrelink's system was issuing 20,000 "compliance interventions" a week in December, up from a previous 20,000 per year when the process was manual. Such a jump seems incredible, and perhaps dangerous.
As data scientist Cathy O'Neil lays out in her recent book Weapons of Math Destruction, the judgments made by algorithms governing everything from our credit scores to our pension payments can easily be wrong -- they were created by humans, after all.
The math-powered applications powering the data economy were based on choices made by fallible human beings. Some of these choices were no doubt made with the best intentions. Nevertheless, many of these models encoded human prejudice, misunderstanding and bias into the software systems that increasingly managed our lives. Like gods, these mathematical models were opaque, their working invisible to all but the highest priests in their domain: mathematicians and computer scientists.
These murky systems can inflict the greatest punishment on the most vulnerable.
Take, for example, a ProPublicareport that found an algorithm being used in American criminal sentencing to predict the accused's likelihood of committing a future crime was biased against black people. The corporation that produced the program, Northpointe, disputed the finding.
O'Neil also details in her book how predictive policing software can create "a pernicious feedback loop" in low income neighbourhoods. These computer programs may recommend areas be patrolled to counter low impact crimes like vagrancy, generating more arrests, and so creating the data that gets those neighbourhoods patrolled still more.
Even Google doesn't get it right. Troublingly, in 2015, a web developer spotted the company's algorithms automatically tagging two black people as "gorillas."
Former Kickstarter data scientist Fred Benenson has come up with a good term for this rose-coloured glasses view of what numbers can do: "Mathwashing."
"Mathwashing can be thought of using math terms (algorithm, model, etc.) to paper over a more subjective reality," he told Technical.lyin an interview. As he goes on to to describe, we often believe computer programs are able to achieve an objective truth out of reach for us humans -- we are wrong.
"Algorithm and data driven products will always reflect the design choices of the humans who built them, and it's irresponsible to assume otherwise," he said.
The point is, algorithms are only as good as we are. And we're not that good.
Make money or go to Stanford? Katie Ledecky is left with an unfair choice.2025-02-28 19:57
21世紀前鋒進球榜 :C羅梅西獨一檔 本澤馬進前十2025-02-28 19:49
中超圍繞國足走一步看一步 媒體:一地雞毛也要按部就班2025-02-28 19:15
前富力主帥出任塞爾維亞主教練獲官宣 雙方簽約3年2025-02-28 18:05
This company is hiring someone just to drink all day2025-02-28 17:53
官方 :尤文1850萬歐買斷麥肯尼 分3年支付沙爾克2025-02-28 17:49
西媒 :皇馬中場雙核已顯疲態 齊達內用他倆太狠了2025-02-28 17:44
姚均晟曬訓練照疑回應轉會傳聞 魯能舊將赴浙江隊2025-02-28 17:42
Dog elected for third term as mayor of Minnesota town2025-02-28 17:36
貝爾下季拒絕降薪 穆帥:他為啥低穀?問皇馬去吧2025-02-28 17:18
This chart shows just how high Simone Biles can jump2025-02-28 19:52
揭秘沙爾克04本賽季第四次換帥 亨特拉爾帶頭逼宮2025-02-28 19:51
利物浦切爾西身價:總和超19億歐元 紅軍三將過億2025-02-28 19:27
滄州雄獅正按中超標準備戰 除艾哈外有望簽挪威中鋒2025-02-28 18:59
Whyd voice2025-02-28 18:38
馬競VS皇馬看點:齊祖再遇匪帥 戰艦迎聯賽生死戰2025-02-28 18:16
貝爾下季拒絕降薪 穆帥:他為啥低穀 ?問皇馬去吧2025-02-28 17:45
拜仁VS多特看點:南大王直麵青春風暴 兩代神鋒對決2025-02-28 17:43
Satisfy your Olympics withdrawals with Nike's latest app2025-02-28 17:29
奧斯卡:大家總對在中國踢球有偏見 但很多大牌來了踢得不行2025-02-28 17:20