首页> 外国专利> Goods residual value predicting device, the article residual value prediction system, vehicle residual value forecasting system and vehicle residual value predicting device

Goods residual value predicting device, the article residual value prediction system, vehicle residual value forecasting system and vehicle residual value predicting device

机译:货物残值预测装置,物品残值预测系统,车辆残值预测系统和车辆残值预测装置

摘要

An article residual value predicting device of the invention comprises an article residual value predicting computer, a first data memory device connected to the article residual value predicting computer to store, as basal record data, respective items such as article names, used article values for each article type, new article values for each article type, and year and month data to which the used article value is applied, a second data memory device connected to the article residual value predicting computer to store item category scores. The article residual value predicting computer comprises article residual rate proven-value calculating means for reading out the used article value and new article value for each article type stored in the first data memory device, calculating article residual rate proven-value from the ratio of the used article value to the new article value, and storing a calculated result thus obtained as an article residual rate proven-value in the first data memory device, category score calculating means for reading out the article name, article residual rate proven-value, year data to which the used article value is applied and month data to which the used article value is applied, which are stored in the first data memory device, and calculating an item category score by performing a regression analysis based on the qualification theory I using the readout article residual rate proven-value as an objective variable and the readout article name, the year to which the used article value is applied as an explanatory variable and the month to which the used article value is applied as an explanatory variable, and storing a calculated score thus obtained in the second data memory device, article residual rate predictive-value calculating means for reading out the score stored in the second data memory device with respect to a specified item category and adopting a year-classified score relative to the year at some future point to be predicted as the year-classified score to calculate an article residual rate predictive-value from an equation “(article residual rate predictive-value)=(item-classified score)+(year-classified score)+(month-classified score)+(constant value)”, and article residual rate calculating means for multiplying the article residual rate predictive-value by a new article value to calculate an article residual value. The first data memory device serves to store maker-classified new article sales quantity or article name-classified new article sales quantity before elapsed years. The article residual value predicting computer further comprises a first weight coefficient calculating means for reading out the maker-classified new article sales quantity or article name-classified new article sales quantity before elapsed years stored in the first data memory device, calculating a weight coefficient from an equation “(maker-classified new article sales quantity before elapsed years)/(maker-classified record number)” or “(article name-classified new article sales quantity before elapsed years)/(article name-classified record number)”, and storing the weight coefficient based on the calculated new article sales quantity in the first data memory device, and weighting means for reading out the weight coefficient based on the calculated new article sales quantity from the first data memory device and duplicating the number of relevant records stored in the first data memory device corresponding to the weight coefficient based on the readout new article sales quantity and storing the record numbers increased by duplicating. The category score calculating means serves to perform the aforementioned regression analysis using concurrently all the relevant records weighted by the weighting means collectively.
机译:本发明的物品残值预测装置包括:物品残值预测计算机;与该物品残值预测计算机连接的第一数据存储装置,以存储诸如物品名称,每个物品的使用物品价值等的项目作为基础记录数据。物品类型,每种物品类型的新物品值以及使用过的物品值所应用的年和月数据,第二个数据存储设备连接到物品残值预测计算机以存储物品类别分数。物品剩余价值预测计算机包括物品剩余率证明值计算装置,用于读取存储在第一数据存储装置中的每种物品类型的使用过的物品价值和新物品价值,并根据该比率计算物品剩余率证明值。将使用过的商品价值转换为新商品价值,并将由此获得的计算结果作为商品剩余率证明值存储在第一数据存储装置中,用于读取商品名称的类别分数计算装置,商品剩余率证明值,年份。存储在第一数据存储装置中的使用过的物品价值的数据和使用过的物品价值的月份的数据被存储在第一数据存储装置中,并通过基于资格理论I的回归分析来计算项目类别得分。读出的物品残差率证明值作为目标变量和读出的物品名称,使用的物品价值适用的年份物品剩余率预测值计算装置,将其作为解释变量,将使用物品的价值所应用的月份作为解释变量,并将由此获得的计算出的分数存储在第二数据存储装置中。第二数据存储装置针对指定的项目类别,并采用相对于某个未来点的年份的年份分类得分作为年份分类得分,以根据方程式“ 1”来计算物品残留率预测值。 (物品残留率预测值)=(物品分类分数)+(年分类分数)+(月分类分数)+(常数)&物品残留率计算装置,用于乘以物品残留率预测值-value乘以新的商品价值来计算商品残值。第一数据存储装置用于在经过几年之前存储制造商分类的新商品销售量或商品名称分类的新商品销售量。物品残值预测计算机还包括第一权重系数计算装置,该第一权重系数计算装置用于读取存储在第一数据存储装置中的经过年限的制造商分类的新商品销售量或商品名称分类的新商品销售量,并从中计算权重系数。等式“(经过年数的制造商分类的新商品销售量)/(制造商分类的记录号)”或“(经过年数的按商品名称分类的新商品销售数量)/(按商品名称分类的记录编号)”,并将基于计算出的新商品销售数量的权重系数存储在第一数据存储设备中,并进行加权用于基于计算出的新商品销售量从第一数据存储设备中读取权重系数,并基于读取的新商品销售量来复制存储在第一数据存储设备中的与权重系数相对应的相关记录的数量并进行存储的装置记录数通过重复增加。类别得分计算装置用于同时使用由加权装置加权的所有相关记录来执行上述回归分析。

著录项

  • 公开/公告号JP4241882B1

    专利类型

  • 公开/公告日2009-03-18

    原文格式PDF

  • 申请/专利权人 あいおい損害保険株式会社;

    申请/专利号JP20080113368

  • 发明设计人 川崎 宗夫;

    申请日2008-04-24

  • 分类号G06Q50/00;G06Q30/00;G06Q40/00;G06Q10/00;

  • 国家 JP

  • 入库时间 2022-08-21 19:38:52

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