Abstract

Wrongdoing is increasing through social media. Detecting them requires highlighting the most interesting topics in the posts. This essential part in the characterization of social network users could be done by a classification of posts. For this, we use a tuple of keywords and the Map-reduce algorithm for data collection and extraction. The main purpose is to achieve success on software realization which will establish a network between social networks to extract data and to speed up the classification of posts. The proposed method consists of verifying a sequence of keywords in the posts, following a grammar in order to determine classes. It allows the categorization of posts and monitoring of social networks. The categorization facilitates research of a particular post containing specific words. Thus, we contribute to increase capacity for wrongdoing prevention and strengthening cyber-security.

Highlights

  • Now-a-days, data is playing essential roles in analysis for the enterprises, in taking decisions

  • We address the issue of post categorization in social networks

  • This section describes the technique of data extraction used through Application Programming Interface (API) layer connected on social networks and the classification of posts based on the map-reduce algorithm

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Summary

INTRODUCTION

Now-a-days, data is playing essential roles in analysis for the enterprises, in taking decisions. Due to the number of posts, the social networks propose a diversity of Big Data with several types such as texts, images and video. The map-reduce has been used in [6] for data-mining and in [4] for parallel algorithmic. A survey on the mapreduce framework has been proposed by N.Alamelu Menaka and others in [10] Both the map-reduce algorithm and classification are the subjects of several works in [8], [9]. SERE and others in [11] introduced an application of the Hough Transform based on the map-reduce algorithm to improve processing time in straight line detection in distributed big images. There are available interface layers such as Application Programming Interface (API) to extract posts from social networks using keywords.

PRELIMINARIES
METHOD DESCRIPTION
Data Extraction
Data Classification
NUMERICAL SIMULATION AND TIME EVALUATION
Data Parallelism using Spark Streaming
CONCLUSION
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