Stores clustering using a data mining approach for distributing automotive spare-parts to reduce transportation costs

Clustering of retail stores in a distribution network with specific geographical limits plays an important and effective role in distribution and transportation costs reduction. In this paper, the relevant data and information for an established automotive spare-parts distribution and after-sales services company (ISACO) for a 3-year period have been analyzed. With respect to the diversity and lot size of the available information such as stores location, order, goods, transportation vehicles and road and traffic information, three effecting factors with specific weights have been defined for the similarity function: 1. Euclidean distance, 2. Lot size 3. Order concurrency. Based on these three factors, the similarity function has been examined through 5 steps using the Association Rules principles, where the clustering of the stores is performed using k-means algorithm and similar stores are allocated to the clusters. These steps include: 1. Similarity function based on the Euclidean distances, 2. Similarity function based on the order concurrency, 3. Similarity function based on the combination of the order concurrency and lot size, 4. Similarity function based on the combination of these three factors and 5. Improved similarity function. The above mentioned clustering operation for each 5 cases addressed in data mining have been carried out using R software and the improved combinational function has been chosen as the optimal clustering function. Then, trend of each retail store have been analyzed using the improved combinational function and along with determining the priority of the depot center establishment for every cluster, the appropriate distribution policies have been formulated for every cluster. The obtained results of this study indicate a significant cost reduction (32%) in automotive spare-parts distribution and transportation costs.

[1]  Michel Gendreau,et al.  A guide to vehicle routing heuristics , 2002, J. Oper. Res. Soc..

[2]  Xin Jin,et al.  Web usage mining based on probabilistic latent semantic analysis , 2004, KDD.

[3]  Michel Wedel,et al.  Cross-Selling Through Database Marketing: A Mixed Data Factor Analyzer for Data Augmentation and Prediction , 2003 .

[4]  So Young Sohn,et al.  Segmentation of stock trading customers according to potential value , 2004, Expert Syst. Appl..

[5]  Filippo Menczer,et al.  Adaptive Assistants for Customized E-Shopping , 2002, IEEE Intell. Syst..

[6]  Su-Yeon Kim,et al.  Customer segmentation and strategy development based on customer lifetime value: A case study , 2006, Expert Syst. Appl..

[7]  Michel Gendreau,et al.  New Heuristics for the Vehicle Routing Problem , 2005 .

[8]  Dirk Van den Poel,et al.  Joint optimization of customer segmentation and marketing policy to maximize long-term profitability , 2002, Expert Syst. Appl..

[9]  Said Salhi,et al.  A cluster insertion heuristic for single and multiple depot vehicle routing problems with backhauling , 1999, J. Oper. Res. Soc..

[10]  Gilbert Laporte,et al.  Classical and modern heuristics for the vehicle routing problem , 2000 .

[11]  Nong Ye,et al.  The Handbook of Data Mining , 2003 .

[12]  Ajith Abraham,et al.  Business Intelligence from Web Usage Mining , 2003, J. Inf. Knowl. Manag..

[13]  Jaime Cerdá,et al.  A cluster-based optimization approach for the multi-depot heterogeneous fleet vehicle routing problem with time windows , 2007, Eur. J. Oper. Res..

[14]  Bamshad Mobasher,et al.  A Unified Approach to Personalization Based on Probabilistic Latent Semantic Models of Web Usage and Content , 2004 .

[15]  C.-Y. Tsai,et al.  A purchase-based market segmentation methodology , 2004, Expert Syst. Appl..

[16]  Euiho Suh,et al.  An LTV model and customer segmentation based on customer value: a case study on the wireless telecommunication industry , 2004, Expert Syst. Appl..

[17]  R. Tadei,et al.  The two-echelon capacitated vehicle routing problem , 2008 .

[18]  Elaine Rich Users are individuals: individualizing user models , 1999, Int. J. Hum. Comput. Stud..