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碩士 === 國立中央大學 === 工業管理研究所在職專班 === 102 === Current operation between ODM and OBM is, ODM will provide a flexible supply chain management operation to OBM. OBM can adjust their predicted product shipping volume once OBM foresees any change on product shipping volume. One the adjustment is to lower p...

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Bibliographic Details
Main Authors: Yi-Xun Weng, 翁乙薰
Other Authors: Gwo-Ji Sheen
Format: Others
Language:zh-TW
Published: 2014
Online Access:http://ndltd.ncl.edu.tw/handle/eh75r2
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spelling ndltd-TW-102NCU050410882019-05-15T21:32:35Z http://ndltd.ncl.edu.tw/handle/eh75r2 none 應用資料探勘技術預測多世代產品出貨量-以I 公司為例 Yi-Xun Weng 翁乙薰 碩士 國立中央大學 工業管理研究所在職專班 102 Current operation between ODM and OBM is, ODM will provide a flexible supply chain management operation to OBM. OBM can adjust their predicted product shipping volume once OBM foresees any change on product shipping volume. One the adjustment is to lower predicted product shipping volume, ODM will need to handle slow moving materials. It means, ODM will need to pay additional HUB storage fee/management fee. In a normal business cycle, market has its self-regulation system. When we face an abnormal business cycle, market self-regulation will be ineffective. This thesis intends to find a better solution to predict product shipping volumes under an unpredicted and abnormal business cycle. With data mining methodology, we will predict product shipping volumes with horizon view and vertical view by regression analysis model. In a horizon view, we will get a predicted product shipping volumes by other products shipping volume. In a vertical view, we will get an old-and-new product transition ratio when OBM needs to implement new generation product. Gwo-Ji Sheen 沈國基 2014 學位論文 ; thesis 69 zh-TW
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description 碩士 === 國立中央大學 === 工業管理研究所在職專班 === 102 === Current operation between ODM and OBM is, ODM will provide a flexible supply chain management operation to OBM. OBM can adjust their predicted product shipping volume once OBM foresees any change on product shipping volume. One the adjustment is to lower predicted product shipping volume, ODM will need to handle slow moving materials. It means, ODM will need to pay additional HUB storage fee/management fee. In a normal business cycle, market has its self-regulation system. When we face an abnormal business cycle, market self-regulation will be ineffective. This thesis intends to find a better solution to predict product shipping volumes under an unpredicted and abnormal business cycle. With data mining methodology, we will predict product shipping volumes with horizon view and vertical view by regression analysis model. In a horizon view, we will get a predicted product shipping volumes by other products shipping volume. In a vertical view, we will get an old-and-new product transition ratio when OBM needs to implement new generation product.
author2 Gwo-Ji Sheen
author_facet Gwo-Ji Sheen
Yi-Xun Weng
翁乙薰
author Yi-Xun Weng
翁乙薰
spellingShingle Yi-Xun Weng
翁乙薰
none
author_sort Yi-Xun Weng
title none
title_short none
title_full none
title_fullStr none
title_full_unstemmed none
title_sort none
publishDate 2014
url http://ndltd.ncl.edu.tw/handle/eh75r2
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AT wēngyǐxūn yīngyòngzīliàotànkānjìshùyùcèduōshìdàichǎnpǐnchūhuòliàngyǐigōngsīwèilì
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