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Bill Hardgrave Sandeep Goyal John Aloysius Information Systems Department University of Arkansas
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Business problem Scientific motivation Research gap Study 1 methodology and results Study 2 methodology and results Study 3 methodology and results Contributions
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Poor store execution is a leading cause for customers leaving retail stores (e.g. DeHoratius and Ton 2009 ; Kurt Salmon Associates, 2002) 24% of stockouts due to inventory record inaccuracy and 60% stockouts due to misplaced products (Ton 2002) Inventory records are inaccurate on 65% of items (Raman et al. 2001)
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Firms are skeptical about implementing new technologies based on pure faith, but need value assessments, tests, or experiments Such empirical-based research requires “a well- designed sample, with appropriate controls and rigorous statistical analysis” (Dutta, Lee, and Whang 2007)
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Inventory visibility Retailer’s ability to determine the location of a unit of inventory at a given point in time by tracking movements in the supply chain Inventory record inaccuracy Absolute difference between physical inventory and the information system inventory at any given time (Fleisch and Tellkamp 2005) Store execution Retailer’s ability to make a product available on-shelf or in-store when a customer seeks it (Fisher et al., 2006)
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Pallet level tagging provides inventory visibility (Delen et al., 2007) Case-level tagging reduces inventory inaccuracy ( Hardgrave et al., 2010a) Case-level tagging reduces stockouts (Hardgrave et al., 2010b)
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For service level considerations, the variable cost of the tags is the factor that most influences the RFID-enabled retail sector (Gaukler et al., 2007) “RFID in the apparel retail value chain is an item-level proposition, and the place to begin is in the store” (Kurt Salmon Associates, 2006)
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Little empirical research examining the ability of RFID technology to improve inventory inaccuracy with item-level tagging Little empirical research on how reduced inventory inaccuracy due to item-level tagging improves store execution Little empirical research evaluating differences in the influence of RFID technology between on- shelf stock and backroom stock
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Will item level RFID tagging improve inventory record accuracy? (Studies 1 and 3) Will item level RFID tagging improve store execution with respect to on-shelf availability? (Study 1) Will item level RFID tagging improve store execution with respect to in-store availability? (Study 2) Will item level RFID tagging have similar influence on- shelf stock/backroom stock? (Study 3)
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RFID Deployment Inventory Visibility Inventory Record Inaccuracy -Stockouts -Customer Service
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Data collected at an upscale department store chain in the United States All products in one apparel category (jeans) tagged at item level Data collection: 12 weeks; 6 baseline and 6 treatment 2 stores: 1 test store, 1 control store Bi-weekly counts: using handheld RFID scanners (Test), handheld barcode scanners (Control) Same time, same path each day
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WeekStore TypeStockoutsTotal # of SKUs % StockoutsSignificance Week 1Control13181716.03%-3.55% *** Test16282719.59% Week 2Control14081517.18%-4.03% *** Test17582521.21% Week 3Control14281417.44%-9.26% *** Test21982026.71% Week 4Control11778114.98%-1.39% *** Test12978816.37% Week 5Control11779014.81%-3.97% *** Test14878818.78% Week 6Control11078713.98%-4.98% *** Test14978618.96%
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WeekStore TypeStockoutsTotal # of SKUs % StockoutsSignificance Week 1Control15878320.18%4.76% ** Test12178515.41% Week 2Control16377920.92%4.07% * Test13278316.86% Week 3Control17476822.66%5.26% *** Test13577617.40% Week 4Control17177522.06%5.25% *** Test13177916.82% Week 5Control17277422.22%5.30% *** Test13278016.92% Week 6Control19276924.97%7.02% *** Test14078017.95%
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PeriodStore Type StockoutsTotal # of SKUs % Stockouts % Change (Control- Test) Net Change Overall Change BaselineControl757480415.76%-4.56%9.83%48.36% *** Test982483420.31% TreatmentControl1030464822.16%5.27% Test791468316.89%
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Data collected at another upscale department store chain in the United States All products in one apparel category (jeans) tagged at item level Data collection: 13 weeks; 6 baseline and 7 treatment 1 store Bi-weekly counts: using handheld barcode scanners (baseline) and handheld RFID scanners (treatment) Same time, same path each day
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PI: Perpetual Inventory
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Data collected at another upscale department store chain in the United States All products in two categories (shoes and bras) tagged at item level Data collection: 12 weeks; 6 baseline and 6 treatment 2 stores Bi-weekly counts: using handheld barcode scanners (baseline) and handheld RFID scanners (treatment) Same time, same path each day
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Stockouts decreased by 48% in study 1 PI system consistently underestimates the percentage stockouts—frozen stockouts Results were essentially what we expected Raises the question: what about other categories?
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Improved inventory inaccuracy Decreased on-shelf stockouts thus improving product availability Influence is not consistent across all products
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What is the impact of improved inventory accuracy (due to RFID tagging) on lost sales? Are the results in this study generalizable to item level tagging in categories other than apparel?
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Bill Hardgrave hardgrave@auburn.edu Sandeep Goyal sangoyal@usi.edu John Aloysius jaloysius@walton.uark.edu
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Looked at understated PI only i.e., where PI < actual Treatment: Control stores: RFID-enabled, business as usual Test stores: business as usual, PLUS used RFID reads (from inbound door, sales floor door, box crusher) to determine count of items in backroom ▪ Auto-PI: adjustment made by system ▪ For example: if PI = 0, but RFID indicates case (=12) in backroom, then PI adjusted – NO HUMAN INTERVENTION
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Backroom Storage Sales Floor Door Readers Backroom Readers Box Crusher Reader Receiving Door Readers
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Two comparisons: Discontinuous growth model (Pre-test/Post-test) PI = b 0 + b 1 *PRE + b 2 *POST + b 3 *TRANS Linear mixed effects model (Test/Control) Random effect: Items grouped within stores Statistical software: R Hardware: Mainframe
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VariableMeanStd. Dev12345 1. Sales Volume1.131.18 2. Item Cost171.8975.71-0.305** 3. Dollar Sales21.7820.26 0.650*** 0.125*** 4. Variety294.0874.15 0.078*** 0.146*** 0.160*** 5. Treatment0.520.5-0.038 0.001-0.076**0.059*** 6. PI- Inaccuracy5.018.38 0.076***-0.080 0.121***0.182***0.030 Notes: ***p<.001, **p<.01
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Comparisons: Linear mixed effects model (Pre-test/Post-test) Random effect: Items grouped within stores Statistical software: R Hardware: Mainframe
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MeanStd. Dev. 12345 1PI_ABS3.1611.38 2Cost47.9911.96 -.049** 3Category Variety 795.31464.01.015** -.198** 4Sales Volume52.40184.95.400** -.032** -.037** 5Dollar Sales735.312786.83.201**.356** -.177**.648** 6Density100.8493.10.159**-.217**.263**.170** -.114**
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