2018
DOI: 10.1007/s10610-018-9378-1
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Applying Crime Prediction Techniques to Japan: A Comparison Between Risk Terrain Modeling and Other Methods

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Cited by 41 publications
(22 citation statements)
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“…Interpreting the plot in the top right corner, it can be interpreted similarly to an ROC curve, but the Y-axis is weighted according to the cumulative number of crimes (Mohler and Porter 2018;Ohyama and Amemiya 2018). This again illustrates that simply using the prior crime counts provides reasonable predictions for future data at the very highest crime locations, as well as provides additional evidence for the law of crime concentration (Weisburd 2015).…”
Section: [Insert Table 2 and Figure 1 Here]mentioning
confidence: 93%
“…Interpreting the plot in the top right corner, it can be interpreted similarly to an ROC curve, but the Y-axis is weighted according to the cumulative number of crimes (Mohler and Porter 2018;Ohyama and Amemiya 2018). This again illustrates that simply using the prior crime counts provides reasonable predictions for future data at the very highest crime locations, as well as provides additional evidence for the law of crime concentration (Weisburd 2015).…”
Section: [Insert Table 2 and Figure 1 Here]mentioning
confidence: 93%
“…To do this we use the predictions generated by RTM based on the 2013 through 2017 data, and then evaluate them against homeless related crimes (restricted to the same property and violent crime categories) in 2018. Figure 4 displays the proportion of area under the study on the X axis, and the Y axis displays the proportion of 2018 homeless crimes captured based on the combined RTM risk score (Ohyama & Amemiya, 2018). So the graph can be read as the top 5% of the RTM risk scores captures approximately 70% of the homeless related crime in LA.…”
Section: Referring Back Tomentioning
confidence: 99%
“…The last two papers of this special issue introduce some reflections about the challenges faced by researchers and agencies in applying evidence-based crime forecasting approaches. Specifically, the study by Ohyama and Amemiya (2018) focuses on the Japanese situation where very low crime numbers seriously jeopardize the use of forecasting methods based on previous crime data. Comparing the performances of several crime forecasting techniques applied to thefts from vehicles in Fukuoka, Japan this paper proves that RTM outperforms other methods, thus supporting a predicting approach based on environmental factors.…”
Section: This Special Issuementioning
confidence: 99%