Crime Analysis, Prediction and Simulation Platform Based on Machine Learning

Author(s):  
Isuru Sachitha Herath ◽  
Randima Dinalankara ◽  
Udaya Wijenayake
Complexity ◽  
2020 ◽  
Vol 2020 ◽  
pp. 1-10
Author(s):  
Xiongwei Zhang ◽  
Hager Saleh ◽  
Eman M. G. Younis ◽  
Radhya Sahal ◽  
Abdelmgeid A. Ali

Twitter is a virtual social network where people share their posts and opinions about the current situation, such as the coronavirus pandemic. It is considered the most significant streaming data source for machine learning research in terms of analysis, prediction, knowledge extraction, and opinions. Sentiment analysis is a text analysis method that has gained further significance due to social networks’ emergence. Therefore, this paper introduces a real-time system for sentiment prediction on Twitter streaming data for tweets about the coronavirus pandemic. The proposed system aims to find the optimal machine learning model that obtains the best performance for coronavirus sentiment analysis prediction and then uses it in real-time. The proposed system has been developed into two components: developing an offline sentiment analysis and modeling an online prediction pipeline. The system has two components: the offline and the online components. For the offline component of the system, the historical tweets’ dataset was collected in duration 23/01/2020 and 01/06/2020 and filtered by #COVID-19 and #Coronavirus hashtags. Two feature extraction methods of textual data analysis were used, n-gram and TF-ID, to extract the dataset’s essential features, collected using coronavirus hashtags. Then, five regular machine learning algorithms were performed and compared: decision tree, logistic regression, k-nearest neighbors, random forest, and support vector machine to select the best model for the online prediction component. The online prediction pipeline was developed using Twitter Streaming API, Apache Kafka, and Apache Spark. The experimental results indicate that the RF model using the unigram feature extraction method has achieved the best performance, and it is used for sentiment prediction on Twitter streaming data for coronavirus.


2021 ◽  
Author(s):  
Dulitha Lansakara ◽  
Thinusha Gunasekera ◽  
Chamara Niroshana ◽  
Imali Weerasinghe ◽  
Pradeepa Bandara ◽  
...  

Counteraction is better that Cure. Forestalling a wrongdoing from happening is superior to examining what or how the wrongdoing had happened. When I pick out do expand this venture the fundamental hassle is growing the centralized server. Awful conduct scene want has relies mostly on the certain awful conduct record and various geospatial and part data. In existing machine they're proposed only getting the crime from the consumer most effective until now they didn’t have system for prediction the crime. Wrongdoing that happens nowadays are have following key qualities, for example, violations rehashing in an occasional style, wrongdoings happening because of some other action and event of violations pre shown by some other data .In our proposed system we overcome that answer and we enforce the Prediction System. We need to accumulate raw facts and method in addition. We use Random forest Algorithm


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