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Detecting Errors in Foreign Trade Transactions: Dealing with Insufficient Data

机译:检测外贸交易中的错误:处理数据不足

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摘要

This paper describes a data mining approach to the problem of detecting erroneous foreign trade transactions in data collected by the Portuguese Institute of Statistics (INE). Erroneous transactions are a minority, but still they have an important impact on the official statistics produced by INE. Detecting these rare errors is a manual, time-consuming task, which is constrained by a limited amount of available resources (e.g. financial, human). These constraints are common to many other data analysis problems (e.g. fraud detection). Our previous work addresses this issue by producing a ranking of outlyingness that allows a better management of the available resources by allocating them to the most relevant cases. It is based on an adaptation of hierarchical clustering methods for outlier detection. However, the method cannot be applied to articles with a small number of transactions. In this paper, we complement the previous approach with some standard statistical methods for outlier detection for handling articles with few transactions. Our experiments clearly show its advantages in terms of the criteria outlined by INE for considering any method applicable to this business problem. The generality of the approach remains to be tested in other problems which share the same constraints (e.g. fraud detection).
机译:本文介绍了一种数据挖掘方法,用于解决葡萄牙统计局(INE)收集的数据中错误的外贸交易问题。错误交易占少数,但仍对INE产生的官方统计数据有重要影响。检测这些罕见的错误是一项手动的,耗时的任务,并且受到有限数量的可用资源(例如财务,人力)的约束。这些约束是许多其他数据分析问题(例如欺诈检测)所共有的。我们以前的工作是通过对外围因素进行排名来解决此问题的,它可以通过将可用资源分配给最相关的案例来更好地管理可用资源。它基于用于异常值检测的分层聚类方法的改编。但是,该方法不能应用于交易数量少的商品。在本文中,我们使用一些标准的统计方法对先前的方法进行补充,以进行异常值检测,以处理交易量少的商品。根据INE概述的标准,我们的实验清楚地表明了其优势,该标准考虑了适用于此业务问题的任何方法。该方法的普遍性仍有待在其他具有相同约束条件的问题中进行测试(例如欺诈检测)。

著录项

  • 来源
    《Progress in artificial intelligence》|2009年|P.435-446|共12页
  • 会议地点 Aveiro(PT);Aveiro(PT)
  • 作者单位

    LIAAD-INESC Porto, Univ. of Porto, R. Ceuta, 118, 6., 4050-190 Porto, Portugal Faculdade de Ciencias, University of Porto;

    rnLIAAD-INESC Porto, Univ. of Porto, R. Ceuta, 118, 6., 4050-190 Porto, Portugal;

    rnLIAAD-INESC Porto, Univ. of Porto, R. Ceuta, 118, 6., 4050-190 Porto, Portugal Faculdade de Economia, University of Porto;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 人工智能理论;
  • 关键词

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