Notice: Function _load_textdomain_just_in_time was called incorrectly. Translation loading for the broken-link-checker domain was triggered too early. This is usually an indicator for some code in the plugin or theme running too early. Translations should be loaded at the init action or later. Please see Debugging in WordPress for more information. (This message was added in version 6.7.0.) in /home/drcprod/public_html/wp-includes/functions.php on line 6114

Notice: Function _load_textdomain_just_in_time was called incorrectly. Translation loading for the bunyad domain was triggered too early. This is usually an indicator for some code in the plugin or theme running too early. Translations should be loaded at the init action or later. Please see Debugging in WordPress for more information. (This message was added in version 6.7.0.) in /home/drcprod/public_html/wp-includes/functions.php on line 6114

Warning: Cannot modify header information - headers already sent by (output started at /home/drcprod/public_html/wp-includes/functions.php:6114) in /home/drcprod/public_html/wp-includes/rest-api/class-wp-rest-server.php on line 1893

Warning: Cannot modify header information - headers already sent by (output started at /home/drcprod/public_html/wp-includes/functions.php:6114) in /home/drcprod/public_html/wp-includes/rest-api/class-wp-rest-server.php on line 1893

Warning: Cannot modify header information - headers already sent by (output started at /home/drcprod/public_html/wp-includes/functions.php:6114) in /home/drcprod/public_html/wp-includes/rest-api/class-wp-rest-server.php on line 1893

Warning: Cannot modify header information - headers already sent by (output started at /home/drcprod/public_html/wp-includes/functions.php:6114) in /home/drcprod/public_html/wp-includes/rest-api/class-wp-rest-server.php on line 1893

Warning: Cannot modify header information - headers already sent by (output started at /home/drcprod/public_html/wp-includes/functions.php:6114) in /home/drcprod/public_html/wp-includes/rest-api/class-wp-rest-server.php on line 1893

Warning: Cannot modify header information - headers already sent by (output started at /home/drcprod/public_html/wp-includes/functions.php:6114) in /home/drcprod/public_html/wp-includes/rest-api/class-wp-rest-server.php on line 1893

Warning: Cannot modify header information - headers already sent by (output started at /home/drcprod/public_html/wp-includes/functions.php:6114) in /home/drcprod/public_html/wp-includes/rest-api/class-wp-rest-server.php on line 1893

Warning: Cannot modify header information - headers already sent by (output started at /home/drcprod/public_html/wp-includes/functions.php:6114) in /home/drcprod/public_html/wp-includes/rest-api/class-wp-rest-server.php on line 1893
{"id":14457,"date":"2017-09-19T09:26:55","date_gmt":"2017-09-19T13:26:55","guid":{"rendered":"http:\/\/www.digitalrhetoriccollaborative.org\/?p=14457"},"modified":"2023-11-16T14:10:30","modified_gmt":"2023-11-16T19:10:30","slug":"white-collar-crime-risk-zones","status":"publish","type":"post","link":"https:\/\/www.digitalrhetoriccollaborative.org\/2017\/09\/19\/white-collar-crime-risk-zones\/","title":{"rendered":"White Collar Crime Risk Zones"},"content":{"rendered":"

Title<\/b>: White Collar Crime Risk Zones
\nAuthor(s)<\/b>: Brian Clifton, Sam Lavigne, and Francis Tseng
\nPublication<\/b>: The New Inquiry<\/i>
\nPublication date<\/b>: March 2017
\nExperience here<\/b>: https:\/\/whitecollar.thenewinquiry.com\/<\/a><\/p>\n

\"White<\/p>\n

It\u2019s moving day here in Madison, Wisconsin. Students are returning for fall semester, and residents across the city are packing up for a new start. After unloading the U-Haul and unpacking the dishes, new residents will begin to get familiar with their neighborhoods, and online searches are an obvious and easy way to find not only nearby coffee shops and laundromats but a variety of location-specific data.<\/p>\n

In particular, a quick Google search for \u201chow much crime is in my neighborhood\u201d reveals an interest in tracking crime through interactive maps. One such site, CrimeReports.com, uses local police reports to track incidents and display this information to users through a Google map of the city. When the Madison Police Department partnered with CrimeReports.com<\/a> in 2009, they cited citizen demand to \u201csee basic patterns relating to crime issues in the city\u201d and further hoped that analysis of this data would help them try predictive policing tactics.<\/p>\n

This use of big data, algorithms, and machine learning for predictive policing has been called into question since being named one of the best 50 inventions of 2011 by TIME Magazine<\/i><\/a>, especially as part of conversations about race and policing. Although promising to revolutionize policing, prevent crime, and educate residents about the relative \u201csafety\u201d of certain places, others have critiqued it<\/a> for relying on historical data, focusing on street crime, and perpetuating bias.<\/p>\n

\u201cWhite Collar Crime Risk Zones\u201d (referred to as WCCRZ) is our Webtext of the Month because it uses algorithms, machine learning, and interactive media to expose the potential biases of these technologies. In an interactive map, white paper, and iPhone app, this project satirizes sites like CrimeReports.com to critique both place-based and person-based predictive policing. In doing so, it raises important questions about how we approach big data and its representations in interactive media, as well as challenging us to think about the ways we understand and prosecute \u201cstreet\u201d crime.<\/p>\n

THE MAP<\/b><\/p>\n

If you\u2019ve just moved to Madison, you can use CrimeReports.com \"\"<\/a>to see what crime looks like in your neighborhood. Simply type in your address, and you\u2019ll find incident reports from the past 15 days for crimes. For example, between July 31 and August 14, 494 incidents are reported to have occurred in Madison: 7 violent, 225 property, and 262 quality of life. Looking around the map, the crimes represented here include battery, assault, breaking and entering, disorder, and liquor.<\/p>\n

Worried that citizens would feel panic or fatigue from an overwhelming number of crimes appearing on the map, the Madison Police Department chooses not to show crimes in all categories available through CrimeReports.com. And this makes sense\u2014a map overwhelmed with information wouldn\u2019t be useful. However, WCCRZ draws our attention to what kinds of crimes we see on maps like these and how this data is used in predictive policing.<\/p>\n

Much like CrimeReports.com, WCCRZ allows you to type in your address and look at the crime in your area. The difference, however, is that it shows white collar crime, and not \u201cstreet\u201d crime, at large in your own neighborhood. WCCRZ then identifies locations with \u201crisk likelihood\u201d for crimes like unauthorized trading or breach of fiduciary duty, overlaying the map with deep reds for high risk areas and yellows for more moderate risk.<\/p>\n

In Madison, dense areas appear around downtown, with labels like, \u201cbreach of fiduciary duty,\u201d \u201cbreach of contract,\u201d or \u201cfailure to supervise.\u201d It also lists nearby financial firms and an approximation of the crime severity listed in US dollars. This draws our attention to a sharp contrast between the crimes listed on other predictive sites that focus more on crimes like theft, liquor, or disorder.<\/p>\n

THE WHITE PAPER<\/b><\/p>\n

The project is accompanied by a white paper detailing how the map works. Using data on financial crimes from the Financial Regulatory Authority since 1964, WCCRZ uses a machine learning algorithm to predict where financial crimes are mostly likely to occur across the US.<\/p>\n

It\u2019s stated purpose is \u201cto identify high risk zones for incidents of financial crime,\u201d to predict the nature and severity of a white collar crime, and to equip citizens for policing and awareness (3). They suggest that an opportunity has been missed to target financial crimes in previous predictive policing efforts because of a dominant concern with \u201cstreet\u201d or \u201ctraditional\u201d crimes.<\/p>\n

Although not yet part of the map, the whitepaper ends with a discussion of how future projects might also attempt to try out person-based predictive policing through facial analysis and psychometrics. This reflects a recent concern with not only identifying and tracking regions where crimes happen, but also the bodies of criminals<\/a>.<\/p>\n

WCCRZ critiques this in a future proposed model for the project. \"\"<\/a>The authors note that the model focuses on a geospatial region, but that it doesn\u2019t yet \u201cidentify which individuals within a particular region are likely to commit the financial crime\u201d (8). They discuss applying this machine learning to facial analysis to identify \u201ccriminality\u201d in individuals. Using photographs of 7000 financial executives from LinkedIn, WCCRZ produces an averaged image of the \u201cgeneralized white collar criminal\u201d (8). The image of a particular face calls into question methods that can serve as a different medium for racial profiling. By describing general characteristics, we are then enabled to read into every similar face the possibility of a threat.<\/p>\n

THE APP<\/b><\/p>\n

By creating an app for the WCCRZ that alerts users when they enter a \u201chigh risk zone for white collar crime,\u201d the map becomes a way to navigate space through the use of GPS. If I were to walk into the Capitol Square, I would be alerted not of a Pokemon<\/a>, but of the risk of encountering defamation or breach of fiduciary duty. These quick blasts virtually stop the user in their tracks and hail them to account for where they are, their position in that particular space, and who might be a potential offender.<\/p>\n

The app also links to several sources, like this \u201cStatement of Concern about Predictive Policing<\/a>,<\/b>\u201d \u201cMachine Bias<\/a>,\u201d and \u201cWhat You Need to Know about Predictive Policing<\/a>.\u201d While much of the WCCRZ implicitly satirizes predictive policing, it also provides users with the means to learn more about how these algorithms work and why we should not consider them politically or rhetorically neutral.<\/p>\n

CONCLUSION<\/b><\/p>\n

By creating an app that uses machine learning technology mirroring that of other predictive policing, WCCRZ critiques place-based and person-based predictive analysis, drawing attention to the disparity between consequences for financial crimes and \u201cstreet\u201d crimes. Importantly, it also demonstrates that data, algorithms, and machine learning are not simply benign tools used to collect objective information. It asks us to look closer at data to identify when it is simply functioning as a feedback loop for its own programmed set of expectations. Programs can function as an argument, and often they can seem even more persuasive when they appear to rely on systems that use methods or data we often consider thorough and neutral.<\/p>\n","protected":false},"excerpt":{"rendered":"

Title: White Collar Crime Risk Zones Author(s): Brian Clifton, Sam Lavigne, and Francis Tseng Publication: The New Inquiry Publication date: March 2017 Experience here: https:\/\/whitecollar.thenewinquiry.com\/ It\u2019s moving day here in Madison, Wisconsin. Students are returning for fall semester, and residents across the city are packing up for a new start. After unloading the U-Haul and<\/p>\n","protected":false},"author":153,"featured_media":14458,"comment_status":"open","ping_status":"closed","sticky":false,"template":"","format":"standard","meta":{"_monsterinsights_skip_tracking":false,"_monsterinsights_sitenote_active":false,"_monsterinsights_sitenote_note":"","_monsterinsights_sitenote_category":0,"footnotes":""},"categories":[14],"tags":[],"ppma_author":[579,1307],"class_list":{"0":"post-14457","1":"post","2":"type-post","3":"status-publish","4":"format-standard","5":"has-post-thumbnail","7":"category-webtext-of-the-month"},"authors":[{"term_id":579,"user_id":0,"is_guest":1,"slug":"cap-toritpeters","display_name":"Tori Thompson Peters","avatar_url":"https:\/\/secure.gravatar.com\/avatar\/3b2d96ea8f05636c827b7908904d6a8e?s=96&d=identicon&r=g","user_url":"","last_name":"Peters","first_name":"Tori Thompson","job_title":"","description":"Tori Thompson Peters is a PhD student in the Composition and Rhetoric program at the University of Wisconsin-Madison. Her research interests are in medical rhetoric."},{"term_id":1307,"user_id":153,"is_guest":0,"slug":"bdeaster","display_name":"Brandee Easter","avatar_url":"https:\/\/secure.gravatar.com\/avatar\/8c442509950241ec04cd7abe48e0bd63?s=96&d=identicon&r=g","user_url":"","last_name":"Easter","first_name":"Brandee","job_title":"","description":"Brandee Easter is a doctoral student in the Composition and Rhetoric program at the University of Wisconsin-Madison. Her research focuses on intersections of gender and digital rhetoric."}],"_links":{"self":[{"href":"https:\/\/www.digitalrhetoriccollaborative.org\/wp-json\/wp\/v2\/posts\/14457","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/www.digitalrhetoriccollaborative.org\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/www.digitalrhetoriccollaborative.org\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/www.digitalrhetoriccollaborative.org\/wp-json\/wp\/v2\/users\/153"}],"replies":[{"embeddable":true,"href":"https:\/\/www.digitalrhetoriccollaborative.org\/wp-json\/wp\/v2\/comments?post=14457"}],"version-history":[{"count":7,"href":"https:\/\/www.digitalrhetoriccollaborative.org\/wp-json\/wp\/v2\/posts\/14457\/revisions"}],"predecessor-version":[{"id":21001,"href":"https:\/\/www.digitalrhetoriccollaborative.org\/wp-json\/wp\/v2\/posts\/14457\/revisions\/21001"}],"wp:featuredmedia":[{"embeddable":true,"href":"https:\/\/www.digitalrhetoriccollaborative.org\/wp-json\/wp\/v2\/media\/14458"}],"wp:attachment":[{"href":"https:\/\/www.digitalrhetoriccollaborative.org\/wp-json\/wp\/v2\/media?parent=14457"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/www.digitalrhetoriccollaborative.org\/wp-json\/wp\/v2\/categories?post=14457"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/www.digitalrhetoriccollaborative.org\/wp-json\/wp\/v2\/tags?post=14457"},{"taxonomy":"author","embeddable":true,"href":"https:\/\/www.digitalrhetoriccollaborative.org\/wp-json\/wp\/v2\/ppma_author?post=14457"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}