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User pattern based online fraud detection and prevention using big data analytics and self organizing maps

机译:基于用户模式的在线欺诈检测和预防使用大数据分析和自组织地图

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Online banking is the one most common service availed by almost all banking customers in the current era. Every second the banking organization, generate enormous amount of valuable data from their customers and their transactions. These valuable data need to be saved and analysed effectively using big data analytic techniques so as to get the necessary insights for the banking organizations. In today's market trend, analysing large data sets comprising of variety of data is of high importance to discover hidden patterns, market tendencies, customer likings and other business insights. The purpose of this research paper is to suggest a machine learning and big data analytics technique to detect and prevent any fraudulent online transactions. The model allows storage of the huge volume of online transaction data, which is then cleaned and features were extracted and reduced using the principal component analysis method. The reduced features are used to train the machine learning model, which is used to identify and recognize the user patterns related to e-transactions. Any e-transactions carried out by the user, the algorithm first checks for the matching user patterns, if there is a match, then the transaction will be successful otherwise the transaction will be reported as fraudulent. Thus the stored patterns created by the self-organizing map algorithm will detect and prevent the unauthorized access on banking transactions.
机译:网上银行是当前时代的几乎所有银行客户的最常见的服务。每一秒银行组织都会从客户及其交易中产生大量有价值的数据。需要使用大数据分析技术有效地保存和分析这些有价值的数据,以便为银行组织获得必要的见解。在当今的市场趋势中,分析包括各种数据的大数据集具有很高的重要性,以发现隐藏的模式,市场趋势,客户喜欢和其他商业洞察力。本研究文件的目的是建议机器学习和大数据分析技术来检测和防止任何欺诈在线交易。该模型允许存储大量的在线交易数据,然后使用主成分分析方法提取和减少清洁和功能。减少的特征用于训练机器学习模型,用于识别和识别与电子交易相关的用户模式。用户执行的任何电子交易,算法首先检查匹配的用户模式,如果存在匹配,则事务将成功,否则将报告交易作为欺诈。因此,由自组织地图算法创建的存储模式将检测和防止对银行交易的未授权访问。

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