{"id":15142,"date":"2022-07-25T00:00:00","date_gmt":"2022-07-24T22:00:00","guid":{"rendered":"https:\/\/c01.purpledshub.com\/bbcsciencefocus\/?post_type=purple_issue&#038;p=15142"},"modified":"2022-07-27T12:11:05","modified_gmt":"2022-07-27T10:11:05","slug":"new-algorithm-predicts-when-and-where-a-crime-will-happen-before-it-takes-place","status":"publish","type":"post","link":"https:\/\/c01.purpledshub.com\/bbcsciencefocus\/2022\/07\/25\/new-algorithm-predicts-when-and-where-a-crime-will-happen-before-it-takes-place\/","title":{"rendered":"New algorithm predicts when and where a crime will happen before it takes place"},"content":{"rendered":"\n<h5 class=\"has-text-align-center article-full-subhead has-text-color\" style=\"color:#f47820\"><strong><span style=\"color:#c30028\" class=\"has-inline-color\">HORIZONS<\/span><\/strong><\/h5>\n\n<h3 class=\"has-text-align-center\">NEW ALGORITHM PREDICTS WHEN AND WHERE A CRIME WILL HAPPEN BEFORE IT TAKES PLACE<\/h3>\n\n<p class=\"has-text-align-center intro\"><strong>The AI model was tested across eight cities in the US and predicts future crimes with 80 to 90 per cent accuracy, without falling foul of bias <\/strong><\/p>\n\n<figure class=\"no-tts wp-block-image article-in-image photo\"><img loading=\"lazy\" width=\"2048\" height=\"1867\" src=\"https:\/\/dj9jqhxgw9833.cloudfront.net\/uploads\/sites\/42\/2022\/07\/68d0a97d-2b64-4a84-b7d4-f32d77a5f5a4.jpg\" alt=\"\" class=\"no-tts wp-image-15140\" srcset=\"https:\/\/c01.purpledshub.com\/uploads\/sites\/42\/2022\/07\/68d0a97d-2b64-4a84-b7d4-f32d77a5f5a4.jpg 2048w, https:\/\/c01.purpledshub.com\/uploads\/sites\/42\/2022\/07\/68d0a97d-2b64-4a84-b7d4-f32d77a5f5a4-300x273.jpg 300w, https:\/\/c01.purpledshub.com\/uploads\/sites\/42\/2022\/07\/68d0a97d-2b64-4a84-b7d4-f32d77a5f5a4-1024x934.jpg 1024w, https:\/\/c01.purpledshub.com\/uploads\/sites\/42\/2022\/07\/68d0a97d-2b64-4a84-b7d4-f32d77a5f5a4-768x700.jpg 768w, https:\/\/c01.purpledshub.com\/uploads\/sites\/42\/2022\/07\/68d0a97d-2b64-4a84-b7d4-f32d77a5f5a4-1536x1400.jpg 1536w\" sizes=\"(max-width: 2048px) 100vw, 2048px\" \/><figcaption>A new algorithm could help predict when and where a crime will take place<\/figcaption><\/figure>\n\n<h5><strong><span style=\"color:#c30028\" class=\"has-inline-color\">YOUR ALGORITHM SUCCESSFULLY PREDICTED CRIME IN US CITIES A WEEK BEFORE THEY HAPPENED. HOW DID YOU BUILD THE ALGORITHM? <\/span><\/strong><\/h5>\n\n<p class=\"article-full-body sans-serif\">The city of Chicago and the seven other cities that we looked at have started putting out crime event logs in the public domain. In Chicago, these are actually updated daily with a week\u2019s delay. <\/p>\n\n<p class=\"article-full-body sans-serif\">These event logs contain information about what happened, what type of crime it was, where it happened, the latitude, longitude, and a timestamp. In Chicago, we also have information about if there were any arrests made when there were interactions with the police officers. <\/p>\n\n<p class=\"article-full-body sans-serif\">So we start with this event log and then digitise the city into small areas of about two blocks by two blocks \u2013 about 1,000 feet [300 metres] across. <\/p>\n\n<p class=\"article-full-body sans-serif\">And in one of those tiles, we\u2019ll see this time series of these different events, like violent crimes, property crimes, homicides and so on. This results in tens of thousands of time series that are coevolving. <\/p>\n\n<p class=\"article-full-body sans-serif\">What our algorithm does is look at these coevolving time series, then figures out how they are dependent on one another and how they\u2019re constraining one another \u2013 so how they\u2019re shaping one another. That brings up a really complex model. <\/p>\n\n<p class=\"article-full-body sans-serif\">You can then make predictions on what\u2019s going to happen, say, a week in advance at a particular tile, plus or minus one day. In Chicago, for example, today is Wednesday. Using our algorithm, you can say that next Wednesday, on the intersection of 37th Street and Southwestern Avenue, there would be homicide. <\/p>\n\n<h5><strong><span style=\"color:#c30028\" class=\"has-inline-color\">HOW DO YOU ENVISAGE THE WAYS YOUR <span>ALGORITHM COULD BE USED?<\/span><\/span><\/strong><\/h5>\n\n<p class=\"article-full-body sans-serif\">People have concerns that this will be used as a tool to put people in jail before they commit crimes. That\u2019s not going to happen, as it doesn\u2019t have any capability to do that. It just predicts an event at a particular location. It doesn\u2019t tell you who is going to commit the event or the exact dynamics or mechanics of the events. <\/p>\n\n<p class=\"article-full-body sans-serif\">It cannot be used in the same way as in the film <em>Minority <\/em><em>Report. <\/em><\/p>\n\n<p class=\"article-full-body sans-serif\">In Chicago, most of the people losing their lives in violent crimes is largely due to gang violence. It is not like a Sherlock Holmes movie where some convoluted murder is happening. It is actually very actionable if you know about it a week in advance \u2013 you can intervene. <\/p>\n\n<p class=\"article-full-body sans-serif\">This does not just involve stepping up enforcement and sending police officers there, there are other ways of intervening socially so that the odds <span>of the crime occurring actually goes down and, ideally, it never happens.<\/span><\/p>\n\n<p class=\"article-full-body sans-serif\">What we would like to do is enable a kind of policy optimisation. My cohorts and I have been very vocal that we don\u2019t want this to be used as a purely predictive policy tool. We want policy optimisation to be the main use of it. We have to enable that, as just putting out a paper and having the algorithm there isn\u2019t enough. We want the mayor or administrators to use the model generated to do simulations and inform policy. <\/p>\n\n<blockquote class=\"wp-block-quote is-style-large\"><p><strong><em>\u201cIt doesn\u2019t tell you who is going to commit the event or the exact dynamics or mechanics of the events. It cannot be used in the same way as in Minority Report\u201d<\/em><\/strong><\/p><\/blockquote>\n\n<h5><strong><span style=\"color:#c30028\" class=\"has-inline-color\">PREVIOUS ALGORITHMS OF THIS KIND HAVE BEEN HEAVILY CRITICISED FOR PRODUCING BIAS, IN TERMS OF RACIAL PROFILES, FOR EXAMPLE. HOW DO YOU ACCOUNT FOR THIS? <\/span><\/strong><\/h5>\n\n<p class=\"article-full-body sans-serif\">Approaches that have been tried before are straight-up machine <span>learning, off-the-shelf tools where you take a giant data set, determine what the important features are, then use those features with a standard complex neural network to try to make predictions.<\/span><\/p>\n\n<p class=\"article-full-body sans-serif\">The issue with that approach is that as soon as you say certain features are important, you\u2019re probably going to miss things, so you will get misleading results. That happened in the Chicago Police Department [in 2014-2016]. <\/p>\n\n<p class=\"article-full-body sans-serif\">They were putting people on the list who were likely to be perpetrators or victims of gun violence, using an equation involving characteristics like arrest histories. And that resulted in a large proportion of the black population being on the list. <\/p>\n\n<p class=\"article-full-body sans-serif\">We are trying to start only from the event logs. There are no humans sitting down figuring out what the features are, or what attributes are important. There\u2019s very little manual input going on, other than the event log that is coming in. We have tried to reduce bias as much as possible. <\/p>\n\n<p class=\"article-full-body sans-serif\">That\u2019s how our model is different from other models that have come before. <\/p>\n\n<h5><strong><span style=\"color:#c30028\" class=\"has-inline-color\">A LOT OF PEOPLE ARE WORRIED ABOUT THE LACK OF TRANSPARENCY IN THE AI DECISION-MAKING PROCESS. IS THERE AN ISSUE WITH THIS? <\/span><\/strong><\/h5>\n\n<p class=\"article-full-body sans-serif\">AI systems have been used to model more and more complex systems, so it\u2019s not surprising that many of them tend to seem like a black box. Compare them to how things worked before. Back then, we just had a tiny differential equation for a system, which gave us the feeling that we understood it. If we have a giant neural network, we just can\u2019t understand what\u2019s going on. So that\u2019s an issue and there\u2019s a lot of work that\u2019s going into explaining AI. <\/p>\n\n<p class=\"article-full-body sans-serif\">We have a really complex model, one that you can\u2019t just look at and read off the factors from. But the way to think about it is to look at all of the event logs. There are observations from this complex social system interacting with all these socioeconomic factors, enforcement factors, demographics, economics and all of these things. All of that feeds into and shapes this social system you\u2019re modelling. You can\u2019t expect a simple kind of pattern to come out of all this data. <\/p>\n\n<div class=\"no-tts wp-block-image article-in-image photo is-style-default\"><figure class=\"no-tts alignleft is-resized\"><img loading=\"lazy\" src=\"https:\/\/dj9jqhxgw9833.cloudfront.net\/uploads\/sites\/42\/2022\/07\/e02d9c70-9886-4839-895f-c261a5dd099d.jpg\" alt=\"\" class=\"no-tts wp-image-15141\" width=\"84\" height=\"96\"\/><\/figure><\/div>\n\n<p><strong><span style=\"color:#c30028\" class=\"has-inline-color\"><strong>PROF ISHANU CHATTOPADHYAY<\/strong><\/span><\/strong><\/p>\n\n<p>Ishanu leads the ZeD Lab at the University of Chicago, where he studies algorithms and data.<\/p>\n\n<p class=\"footer\">IMAGE: GETTY IMAGES<\/p>\n","protected":false},"excerpt":{"rendered":"<p>The AI model was tested across eight cities in the US and predicts future crimes with 80 to 90 per cent accuracy, without falling foul of bias 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AI model was tested across eight cities in the US and predicts future crimes with 80 to 90 per cent accuracy, without falling foul of 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