Artificial intelligence applications in supply chain management

Abstract This paper presents a systematic review of studies related to artificial intelligence (AI) applications in supply chain management (SCM). Our systematic search of the related literature identifies 150 journal articles published between 1998 and 2020. A thorough bibliometric analysis is completed to develop the past and present state of this literature. A co-citation analysis on this pool of articles provides an understanding of the clusters of knowledge that constitute this research area. To further direct our discussions, we develop and validate an AI taxonomy which we use as a scale to conduct our bibliometric and co-citation analyses. The proposed taxonomy consists of three research categories of (a) sensing and interacting, (b) learning, and (c) decision making. These categories collectively establish the basis for present and future research on the application of AI methods in SCM literature and practice. Our analysis of the primary research clusters finds that learning methods are slowly getting momentum and sensing and interacting methods offer an emerging area of research. Finally, we provide a roadmap into future studies on AI applications in SCM. Our analysis underpins the importance of behavioral considerations in future studies.

[1]  Patrick Mikalef,et al.  Developing an Artificial Intelligence Capability: A Theoretical Framework for Business Value , 2019, BIS.

[2]  Babak Abbasi,et al.  Predicting solutions of large-scale optimization problems via machine learning: A case study in blood supply chain management , 2020, Comput. Oper. Res..

[3]  Hermann Gehring,et al.  A hybrid genetic algorithm for the container loading problem , 2001, Eur. J. Oper. Res..

[4]  Hokey Min,et al.  Artificial intelligence in supply chain management: theory and applications , 2010 .

[5]  Georgia Perakis,et al.  Data Analytics in Operations Management: A Review , 2020, Manuf. Serv. Oper. Manag..

[6]  Behnam Fahimnia,et al.  Inventory and ordering decisions: a systematic review on research driven through behavioral experiments , 2020, International Journal of Operations & Production Management.

[7]  Yixin Chen,et al.  CLUE: cluster-based retrieval of images by unsupervised learning , 2005, IEEE Transactions on Image Processing.

[8]  Shahriar Akter,et al.  Big data analytics and firm performance: Effects of dynamic capabilities , 2017 .

[9]  M. Ben-Daya,et al.  Internet of things and supply chain management: a literature review , 2019, Int. J. Prod. Res..

[10]  Cristiano André da Costa,et al.  Intelligent personal assistants: A systematic literature review , 2020, Expert Syst. Appl..

[11]  Richard A. Wysk,et al.  Development and benchmarking of an epoch time synchronization method for distributed simulation , 2005 .

[12]  R. K. Mavi,et al.  Identification and Assessment of Logistical Factors to Evaluate a Green Supplier Using the Fuzzy Logic DEMATEL Method , 2013 .

[13]  Stewart Robinson,et al.  Model development in discrete-event simulation and system dynamics: An empirical study of expert modellers , 2010, Eur. J. Oper. Res..

[14]  Kash Barker,et al.  A Bayesian network model for resilience-based supplier selection , 2016 .

[15]  Atsunori Ogawa,et al.  Error detection and accuracy estimation in automatic speech recognition using deep bidirectional recurrent neural networks , 2017, Speech Commun..

[16]  Diyar Akay,et al.  A multi-criteria intuitionistic fuzzy group decision making for supplier selection with TOPSIS method , 2009, Expert Syst. Appl..

[17]  Anthony J. Jakeman,et al.  Artificial Intelligence techniques: An introduction to their use for modelling environmental systems , 2008, Math. Comput. Simul..

[18]  Nilanjan Dey,et al.  Internet of Things and Big Data Analytics Toward Next-Generation Intelligence , 2018 .

[19]  Lyès Benyoucef,et al.  Simulation based fuzzy TOPSIS approach for group multi-criteria supplier selection problem , 2012, Eng. Appl. Artif. Intell..

[20]  Mahour Mellat-Parast,et al.  Developing a grey-based decision-making model for supplier selection , 2012 .

[21]  Zeng Ye,et al.  Constructing road safety performance indicators using Fuzzy Delphi Method and Grey Delphi Method , 2011, Expert Syst. Appl..

[22]  Marios C. Angelides,et al.  System dynamics modelling in supply chain management: research review , 2000, 2000 Winter Simulation Conference Proceedings (Cat. No.00CH37165).

[23]  F. Petropoulos,et al.  Improving forecasting by estimating time series structural components across multiple frequencies , 2014 .

[24]  Peter Norvig,et al.  Artificial Intelligence: A Modern Approach , 1995 .

[25]  Mojtaba Khorram Niaki,et al.  Additive manufacturing management: a review and future research agenda , 2017, Int. J. Prod. Res..

[26]  Yogesh Kumar Dwivedi,et al.  Artificial intelligence for decision making in the era of Big Data - evolution, challenges and research agenda , 2019, Int. J. Inf. Manag..

[27]  Jheng-Long Wu,et al.  Intelligent compilation of patent summaries using machine learning and natural language processing techniques , 2020, Adv. Eng. Informatics.

[28]  Joseph Sarkis,et al.  Green supply chain management: A review and bibliometric analysis , 2015 .

[29]  R. Fildes,et al.  Effective forecasting and judgmental adjustments: an empirical evaluation and strategies for improvement in supply-chain planning , 2009 .

[30]  Yue Wu,et al.  Production , Manufacturing and Logistics A robust optimization model for multi-site production planning problem in an uncertain environment , 2007 .

[31]  George K. Karagiannidis,et al.  Efficient Machine Learning for Big Data: A Review , 2015, Big Data Res..

[32]  Aris A. Syntetos,et al.  Spare parts management : a review of forecasting research and extensions , 2010 .

[33]  Jan Olhager,et al.  Simulating production and inventory control systems: a learning approach to operational excellence , 2006 .

[34]  Kenneth L. Schultz,et al.  Bodies of Knowledge for Research in Behavioral Operations , 2009 .

[35]  Maria L. Gini,et al.  Agent-assisted supply chain management: Analysis and lessons learned , 2014, Decis. Support Syst..

[36]  Eric T. Bradlow,et al.  The Role of Big Data and Predictive Analytics in Retailing , 2017 .

[37]  Joseph Sarkis,et al.  Integrating sustainability into supplier selection with grey system and rough set methodologies , 2010 .

[38]  Angappa Gunasekaran,et al.  A hybrid adaptive decision system for supply chain reconfiguration , 2016 .

[39]  Paul A. Pavlou,et al.  Understanding and Predicting Electronic Commerce Adoption: An Extension of the Theory of Planned Behavior , 2006, MIS Q..

[40]  Marco Fraccaro,et al.  Machine learning meets mathematical optimization to predict the optimal production of offshore wind parks , 2018, Comput. Oper. Res..

[41]  Manoj Kumar Tiwari,et al.  Kernel distance-based robust support vector methods and its application in developing a robust K-chart , 2006 .

[42]  Lotfi A. Zadeh,et al.  Fuzzy Sets , 1996, Inf. Control..

[43]  Kannan Govindan,et al.  Multi criteria decision making approaches for green supplier evaluation and selection: a literature review , 2015 .

[44]  Ali H. Diabat,et al.  Integrated fuzzy multi criteria decision making method and multi-objective programming approach for supplier selection and order allocation in a green supply chain , 2013 .

[45]  Joseph Sarkis,et al.  Green supply chain practices evaluation in the mining industry using a joint rough sets and fuzzy TOPSIS methodology , 2015 .

[46]  Ming-Lang Tseng,et al.  Using hybrid method to evaluate the green performance in uncertainty , 2011, Environmental monitoring and assessment.

[47]  Tsan-Ming Choi,et al.  Big Data Analytics in Operations Management , 2018 .

[48]  Z. Allam,et al.  On big data, artificial intelligence and smart cities , 2019, Cities.

[49]  He-Yau Kang,et al.  A green supplier selection model for high-tech industry , 2009, Expert Syst. Appl..

[50]  Enno Siemsen,et al.  Integrating human judgement into quantitative forecasting methods: A review , 2019, Omega.

[51]  W. Bearden,et al.  The use of expert judges in scale development: Implications for improving face validity of measures of unobservable constructs , 2004 .

[52]  Abhijit Gosavi,et al.  Global supply chain management: A reinforcement learning approach , 2002 .

[53]  J. Venkateswaran,et al.  Hybrid system dynamic—discrete event simulation-based architecture for hierarchical production planning , 2005 .

[54]  Francesca Rossi,et al.  Constraint satisfaction techniques in planning and scheduling , 2010, J. Intell. Manuf..

[55]  Gerald Reiner,et al.  Customer-oriented improvement and evaluation of supply chain processes supported by simulation models , 2005 .

[56]  Alexandre Dolgui,et al.  The impact of digital technology and Industry 4.0 on the ripple effect and supply chain risk analytics , 2018, Int. J. Prod. Res..

[57]  Nils J. Nilsson,et al.  The Quest for Artificial Intelligence , 2009 .

[58]  Fengqi You,et al.  Risk Management for a Global Supply Chain Planning Under Uncertainty : Models and Algorithms , 2009 .

[59]  James Nga-Kwok Liu,et al.  Application of decision-making techniques in supplier selection: A systematic review of literature , 2013, Expert Syst. Appl..

[60]  Seyed Taghi Akhavan Niaki,et al.  A genetic algorithm for vendor managed inventory control system of multi-product multi-constraint economic order quantity model , 2011, Expert Syst. Appl..

[61]  Boris V. Sokolov,et al.  Control and system-theoretic identification of the supply chain dynamics domain for planning, analysis and adaptation of performance under uncertainty , 2013, Eur. J. Oper. Res..

[62]  Jun Tian,et al.  From IT deployment capabilities to competitive advantage: An exploratory study in China , 2010, Inf. Syst. Frontiers.

[63]  G. Antoniou,et al.  Supply chain risk management and artificial intelligence: state of the art and future research directions , 2018, Int. J. Prod. Res..

[64]  Chunhua Hu,et al.  A method for real-time trajectory monitoring to improve taxi service using GPS big data , 2016, Inf. Manag..

[65]  Ruomeng Cui,et al.  AI and Procurement , 2020, Manuf. Serv. Oper. Manag..

[66]  Raffaello Iavagnilio,et al.  Production planning of a multi-site manufacturing system by hybrid modelling: A case study from the automotive industry , 2003 .

[67]  R. Freeman The Politics of Stakeholder Theory: Some Future Directions , 1994, Business Ethics Quarterly.

[68]  T. C. Powell,et al.  Information technology as competitive advantage: the role of human , 1997 .

[69]  Muhamad Zameri Mat Saman,et al.  Sustainable Supplier Selection based on Self-organizing Map Neural Network and Multi Criteria Decision Making Approaches☆ , 2012 .

[70]  Christoph H. Loch,et al.  Creativity and Risk Taking Aren't Rational: Behavioral Operations in MOT , 2017 .

[71]  B. Chae,et al.  Insights from hashtag #supplychain and Twitter Analytics: Considering Twitter and Twitter data for supply chain practice and research , 2015 .

[72]  S. Fawcett,et al.  Data Science, Predictive Analytics, and Big Data: A Revolution that Will Transform Supply Chain Design and Management , 2013 .

[73]  David B. Dunson,et al.  Exploiting Big Data in Logistics Risk Assessment via Bayesian Nonparametrics , 2014, Oper. Res..

[74]  Kai Huang,et al.  The Value of Multistage Stochastic Programming in Capacity Planning Under Uncertainty , 2009, Oper. Res..

[75]  Benjamin T. Hazen,et al.  Big data and predictive analytics for supply chain and organizational performance , 2017 .

[76]  Klaus Turowski,et al.  Agent-based e-commerce in case of mass customization , 2002 .

[77]  Lazaros G. Papageorgiou,et al.  A combined optimization and agent-based approach to supply chain modelling and performance assessment , 2001 .

[78]  Myles D. Garvey,et al.  An analytical framework for supply network risk propagation: A Bayesian network approach , 2015, Eur. J. Oper. Res..

[79]  Enzo Morosini Frazzon,et al.  A supervised machine learning approach to data-driven simulation of resilient supplier selection in digital manufacturing , 2019, Int. J. Inf. Manag..

[80]  Andrew Kach,et al.  A Review of the Existing and Emerging Topics in the Supply Chain Risk Management Literature , 2020, Decis. Sci..

[81]  H. S. Wang,et al.  Supplier Selection and Production Planning by Using Guided Genetic Algorithm and Dynamic Nondominated Sorting Genetic Algorithm II Approaches , 2015 .

[82]  Hongwei Ding,et al.  A simulation optimization methodology for supplier selection problem , 2005, Int. J. Comput. Integr. Manuf..

[83]  Zach G. Zacharia,et al.  DEFINING SUPPLY CHAIN MANAGEMENT , 2001 .

[84]  Alan L. Porter,et al.  Topic analysis and forecasting for science, technology and innovation: Methodology with a case study focusing on big data research , 2016 .

[85]  Niloy Ganguly,et al.  Multi-criteria online frame-subset selection for autonomous vehicle videos , 2020, Pattern Recognit. Lett..

[86]  Sirish L. Shah,et al.  Fault detection and diagnosis in process data using one-class support vector machines , 2009 .

[87]  Patrick Mikalef,et al.  Big Data Analytics Capabilities and Innovation: The Mediating Role of Dynamic Capabilities and Moderating Effect of the Environment , 2019, British Journal of Management.

[88]  Yong Deng,et al.  A new fuzzy dempster MCDM method and its application in supplier selection , 2011, Expert Syst. Appl..

[89]  Daniel E. O'Leary,et al.  Artificial Intelligence and Big Data , 2013, IEEE Intelligent Systems.

[90]  S. Umeda,et al.  Supply chain simulation: generic models and application examples , 2006 .

[91]  Furong Gao,et al.  Batch process monitoring based on support vector data description method , 2011 .

[92]  George P. Richardson,et al.  Feedback Thought in Social Science and Systems Theory , 1991 .

[93]  Bin Wu,et al.  A neural network ensemble model for on-line monitoring of process mean and variance shifts in correlated processes , 2010, Expert Syst. Appl..

[94]  Xiaodong Li,et al.  An agent-based framework for supply chain coordination in construction , 2005 .

[95]  Borja Ponte,et al.  Applying machine learning to the dynamic selection of replenishment policies in fast-changing supply chain environments , 2018, Int. J. Prod. Res..

[96]  Matthias Holweg,et al.  Towards responsive vehicle supply: a simulation-based investigation into automotive scheduling systems , 2005 .

[97]  Mehrbakhsh Nilashi,et al.  Measuring sustainability through ecological sustainability and human sustainability: A machine learning approach , 2019 .

[98]  Rustam M. Vahidov,et al.  Application of machine learning techniques for supply chain demand forecasting , 2008, Eur. J. Oper. Res..

[99]  Gordon B. Davis,et al.  User Acceptance of Information Technology: Toward a Unified View , 2003, MIS Q..

[100]  John McCarthy,et al.  A Proposal for the Dartmouth Summer Research Project on Artificial Intelligence, August 31, 1955 , 2006, AI Mag..

[101]  Andreas M. Kaplan,et al.  A Brief History of Artificial Intelligence: On the Past, Present, and Future of Artificial Intelligence , 2019, California Management Review.

[102]  Han-Lin Li,et al.  A robust optimization model for stochastic logistic problems , 2000 .

[103]  Francisco Saldanha-da-Gama,et al.  Facility location and supply chain management - A review , 2009, Eur. J. Oper. Res..

[104]  J. Meredith,et al.  The evolution of the intellectual structure of operations management—1980–2006: A citation/co-citation analysis , 2009 .

[105]  Antonio Moreno,et al.  The Operational Value of Social Media Information , 2018 .

[106]  R. J. Kuo,et al.  Integration of artificial neural network and MADA methods for green supplier selection , 2010 .

[107]  Mei Chen,et al.  Object semantics sentiment correlation analysis enhanced image sentiment classification , 2020, Knowl. Based Syst..

[108]  Viju Raghupathi,et al.  Big data analytics in healthcare: promise and potential , 2014, Health Information Science and Systems.

[109]  C. Jabbour,et al.  A systematic review of empirical and normative decision analysis of sustainability-related supplier risk management , 2020 .

[110]  Surajit Bag,et al.  Role of artificial intelligence in operations environment: a review and bibliometric analysis , 2020 .

[111]  Kris K. Hauser,et al.  Artificial intelligence framework for simulating clinical decision-making: A Markov decision process approach , 2013, Artif. Intell. Medicine.

[112]  Hadi Ghaderi,et al.  Sustainable third-party reverse logistics provider evaluation and selection using fuzzy SWARA and developed fuzzy COPRAS in the presence of risk criteria , 2018, Appl. Soft Comput..

[113]  Joseph Sarkis,et al.  Evaluating supplier development programs with a grey based rough set methodology , 2011, Expert Syst. Appl..

[114]  Stewart Robinson,et al.  The application of discrete event simulation and system dynamics in the logistics and supply chain context , 2012, Decis. Support Syst..

[115]  Steve Brown,et al.  Supply chain finance: A systematic literature review and bibliometric analysis , 2018, International Journal of Production Economics.

[116]  Gülsen Aydin Keskin,et al.  The Fuzzy ART algorithm: A categorization method for supplier evaluation and selection , 2010, Expert Syst. Appl..

[117]  Duncan McFarlane,et al.  Extracting supply chain maps from news articles using deep neural networks , 2020, Int. J. Prod. Res..

[118]  Ardeshir Bahreininejad,et al.  Sustainable supplier selection: A ranking model based on fuzzy inference system , 2012, Appl. Soft Comput..

[119]  Patroklos Georgiadis,et al.  The Impact of Product Lifecycle on Capacity Planning of Closed‐Loop Supply Chains with Remanufacturing , 2006 .

[120]  Fugee Tsung,et al.  A kernel-distance-based multivariate control chart using support vector methods , 2003 .

[121]  Nishikant Mishra,et al.  Social media data analytics to improve supply chain management in food industries , 2017, Transportation Research Part E: Logistics and Transportation Review.

[122]  Christopher S. Tang,et al.  Modeling Supply Chain Planning Under Demand Uncertainty Using Stochastic Programming: A Survey Motivated by Asset-Liability Management , 2009 .

[123]  Wen-Yau Liang,et al.  Agent-based demand forecast in multi-echelon supply chain , 2006, Decis. Support Syst..

[124]  Hadi Ghaderi,et al.  Collection and distribution of returned-remanufactured products in a vehicle routing problem with pickup and delivery considering sustainable and green criteria , 2018 .

[125]  Angappa Gunasekaran,et al.  Big Data and Predictive Analytics and Manufacturing Performance: Integrating Institutional Theory, Resource‐Based View and Big Data Culture , 2019, British Journal of Management.

[126]  Chuen-Sheng Cheng,et al.  Using neural networks to detect the bivariate process variance shifts pattern , 2011, Comput. Ind. Eng..

[127]  Murat Kucukvar,et al.  Sustainability assessment and modeling based on supervised machine learning techniques: The case for food consumption , 2020, Journal of Cleaner Production.

[128]  Pierre Lemarinier,et al.  Agent Based Modelling and Simulation tools: A review of the state-of-art software , 2017, Comput. Sci. Rev..

[129]  William Yeoh,et al.  Optimizing microtask assignment on crowdsourcing platforms using Markov chain Monte Carlo , 2020, Decis. Support Syst..

[130]  A. C. Márquez,et al.  The procurement of strategic parts. Analysis of a portfolio of contracts with suppliers using a system dynamics simulation model , 2004 .

[131]  Joseph Sarkis,et al.  Green supplier development: analytical evaluation using rough set theory , 2010 .

[132]  Stefan Feuerriegel,et al.  Deep learning in business analytics and operations research: Models, applications and managerial implications , 2018, Eur. J. Oper. Res..

[133]  Kenneth Gilbert,et al.  An ARIMA Supply Chain Model , 2005, Manag. Sci..

[134]  J. Galindo,et al.  Credit Risk Assessment Using Statistical and Machine Learning: Basic Methodology and Risk Modeling Applications , 2000 .

[135]  Indranil Bose,et al.  Managing a Big Data project: The case of Ramco Cements Limited , 2015 .

[136]  David L. Olson,et al.  Supply chain risk, simulation, and vendor selection , 2008 .

[137]  Pei-Wen Chen,et al.  Estimating the shift size in the process mean with support vector regression and neural networks , 2011, Expert Syst. Appl..

[138]  Geoffrey E. Hinton,et al.  Speech recognition with deep recurrent neural networks , 2013, 2013 IEEE International Conference on Acoustics, Speech and Signal Processing.

[139]  Charbel José Chiappetta Jabbour,et al.  Selecting green suppliers based on GSCM practices: Using fuzzy TOPSIS applied to a Brazilian electronics company , 2014, Eur. J. Oper. Res..

[140]  A. Oke,et al.  Antecedents of supply chain visibility in retail supply chains: A resource-based theory perspective , 2007 .

[141]  Fugee Tsung,et al.  Improved design of kernel distance–based charts using support vector methods , 2013 .

[142]  Luiz Cesar Ribeiro Carpinetti,et al.  A decision making model based on fuzzy inference to predict the impact of SCOR® indicators on customer perceived value , 2020 .

[143]  Mohit Chamania,et al.  Artificial Intelligence (AI) Methods in Optical Networks: A Comprehensive Survey , 2018, Opt. Switch. Netw..

[144]  Ernesto Martínez,et al.  Agent-based modeling and simulation of an autonomic manufacturing execution system , 2012, Comput. Ind..

[145]  Zhu Han,et al.  Machine Learning Paradigms for Next-Generation Wireless Networks , 2017, IEEE Wireless Communications.

[146]  Zahir Irani,et al.  Big data in an HR context: Exploring organizational change readiness, employee attitudes and behaviors , 2017 .

[147]  Behnam Fahimnia,et al.  The human factor in supply chain forecasting: A systematic review , 2019, Eur. J. Oper. Res..

[148]  Chen-Tung Chen,et al.  A fuzzy approach for supplier evaluation and selection in supply chain management , 2006 .

[149]  Hamed Soleimani,et al.  Design and optimization of biomass electricity supply chain with uncertainty in material quality, availability and market demand , 2020 .

[150]  Sridhar Mahadevan,et al.  Average reward reinforcement learning: Foundations, algorithms, and empirical results , 2004, Machine Learning.

[151]  Bhuvana Ramabhadran,et al.  Joint Modeling of Accents and Acoustics for Multi-Accent Speech Recognition , 2018, 2018 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP).

[152]  Rob J. Hyndman,et al.  Fast computation of reconciled forecasts for hierarchical and grouped time series , 2016, Comput. Stat. Data Anal..

[153]  Huimin Lu,et al.  Brain Intelligence: Go beyond Artificial Intelligence , 2017, Mobile Networks and Applications.

[154]  Juan Carlos Augusto,et al.  Ambient Intelligence—the Next Step for Artificial Intelligence , 2008, IEEE Intelligent Systems.

[155]  Kim Hua Tan,et al.  Harvesting big data to enhance supply chain innovation capabilities: An analytic infrastructure based on deduction graph , 2015 .

[156]  Shane Legg,et al.  Universal Intelligence: A Definition of Machine Intelligence , 2007, Minds and Machines.

[157]  Geoffrey E. Hinton,et al.  Deep Learning , 2015, Nature.

[158]  Charles J. Malmborg,et al.  A genetic algorithm for service level based vehicle scheduling , 1996 .

[159]  Wei-Chang Yeh,et al.  Using multi-objective genetic algorithm for partner selection in green supply chain problems , 2011, Expert Syst. Appl..

[160]  C. Carter,et al.  Reconceptualizing Intuition in Supply Chain Management , 2017 .

[161]  Andrew Kusiak,et al.  Expert systems for planning and scheduling manufacturing systems , 1988 .

[162]  Detmar W. Straub,et al.  Information Technology Adoption Across Time: A Cross-Sectional Comparison of Pre-Adoption and Post-Adoption Beliefs , 1999, MIS Q..

[163]  Qinghua Zhu,et al.  Evaluating green supplier development programs with a grey-analytical network process-based methodology , 2014, Eur. J. Oper. Res..

[164]  Ashutosh Sarkar,et al.  Evaluation of supplier capability and performance: A method for supply base reduction , 2006 .

[165]  William Rand,et al.  Letting the Computers Take Over: Using AI to Solve Marketing Problems , 2019, California Management Review.

[166]  Stefan Nickel,et al.  A multi-stage stochastic supply network design problem with financial decisions and risk management , 2012 .

[167]  Ali Diabat,et al.  A hybrid genetic algorithm based heuristic for an integrated supply chain problem , 2016 .

[168]  Andrew Greasley Using system dynamics in a discrete‐event simulation study of a manufacturing plant , 2005 .

[169]  Yogesh K. Dwivedi,et al.  Understanding artificial intelligence adoption in operations management: insights from the review of academic literature and social media discussions , 2020, Annals of Operations Research.

[170]  Mithat Zeydan,et al.  A combined methodology for supplier selection and performance evaluation , 2011, Expert Syst. Appl..

[171]  Lei-Yu Wu,et al.  Applicability of the resource-based and dynamic-capability views under environmental volatility , 2010 .

[172]  Gülsen Akman,et al.  Evaluating suppliers to include green supplier development programs via fuzzy c-means and VIKOR methods , 2015, Comput. Ind. Eng..

[173]  Rob J. Hyndman,et al.  Optimal combination forecasts for hierarchical time series , 2011, Comput. Stat. Data Anal..

[174]  Konstantinos Nikolopoulos,et al.  Supply chain forecasting: Theory, practice, their gap and the future , 2016, Eur. J. Oper. Res..

[175]  Grigoris Antoniou,et al.  Decision Support Systems and Artificial Intelligence in Supply Chain Risk Management , 2018, Springer Series in Supply Chain Management.

[176]  Kevin W. Boyack,et al.  Co-citation analysis, bibliographic coupling, and direct citation: Which citation approach represents the research front most accurately? , 2010 .

[177]  Sanjoy Kumar Paul,et al.  Supplier selection for managing supply risks in supply chain: a fuzzy approach , 2015 .

[178]  E. S. Gardner EXPONENTIAL SMOOTHING: THE STATE OF THE ART, PART II , 2006 .

[179]  Durk-Jouke van der Zee,et al.  Building insightful simulation models using Petri Nets - A structured approach , 2011, Decis. Support Syst..

[180]  S. Rahman,et al.  Indian textile suppliers' sustainability evaluation using the grey approach , 2012 .

[181]  Alexandre Dolgui,et al.  CF-NN: a novel decision support model for borrower identification on the peer-to-peer lending platform , 2020, Int. J. Prod. Res..

[182]  Trevor Hastie,et al.  The Elements of Statistical Learning , 2001 .

[183]  Erkan Kose,et al.  Green supplier selection based on IFS and GRA , 2013, Grey Syst. Theory Appl..

[184]  Andrzej J. Kasinski,et al.  Supervised Learning in Spiking Neural Networks with ReSuMe: Sequence Learning, Classification, and Spike Shifting , 2010, Neural Computation.

[185]  Alexandre Dolgui,et al.  Scheduling in production, supply chain and Industry 4.0 systems by optimal control: fundamentals, state-of-the-art and applications , 2019, Int. J. Prod. Res..

[186]  W. Currie,et al.  A model for unpacking big data analytics in high-frequency trading , 2017 .

[187]  Marvin Minsky,et al.  Semantic Information Processing , 1968 .

[188]  Rui M. Sousa,et al.  Distributed production planning and control agent-based system , 2006 .

[189]  Ying Ding,et al.  Scholarly network similarities: How bibliographic coupling networks, citation networks, cocitation networks, topical networks, coauthorship networks, and coword networks relate to each other , 2012, J. Assoc. Inf. Sci. Technol..

[190]  L. Preston,et al.  The Stakeholder Theory of the Corporation: Concepts, Evidence, and Implications , 1995 .

[191]  Mile Pavlic,et al.  Formalisation method for the text expressed knowledge , 2014, Expert Syst. Appl..

[192]  Todd A Ricketts,et al.  Sound quality measures for speech in noise through a commercial hearing aid implementing digital noise reduction. , 2005, Journal of the American Academy of Audiology.

[193]  William H. DeLone,et al.  Two decades of research on business intelligence system adoption, utilization and success - A systematic literature review , 2019, Decis. Support Syst..

[194]  Matheus Albergaria,et al.  The role of big data analytics capabilities (BDAC) in understanding the challenges of service information and operations management in the sharing economy: Evidence of peer effects in libraries , 2020, Int. J. Inf. Manag..

[195]  Ting-Yu Chen,et al.  A PROMETHEE-based outranking method for multiple criteria decision analysis with interval type-2 fuzzy sets , 2013, Soft Computing.

[196]  Hinrich Schütze,et al.  Book Reviews: Foundations of Statistical Natural Language Processing , 1999, CL.

[197]  Benjamin T. Hazen,et al.  Data quality for data science, predictive analytics, and big data in supply chain management: An introduction to the problem and suggestions for research and applications , 2014 .

[198]  Zhi Xiao,et al.  Identification of supply chain disruptions with economic performance of firms using multi-category support vector machines , 2015 .

[199]  S. Benoit,et al.  Chain liability in multitier supply chains? Responsibility attributions for unsustainable supplier behavior , 2014 .

[200]  Xuesong Guo,et al.  Supplier selection based on hierarchical potential support vector machine , 2009, Expert Syst. Appl..

[201]  Jason Weston,et al.  Natural Language Processing (Almost) from Scratch , 2011, J. Mach. Learn. Res..

[202]  Andreas M. Kaplan,et al.  Siri, Siri, in my hand: Who’s the fairest in the land? On the interpretations, illustrations, and implications of artificial intelligence , 2019, Business Horizons.

[203]  M. Logan Using Agency Theory to Design Successful Outsourcing Relationships , 2000 .

[204]  R. Gregory,et al.  Public perceptions of expert disagreement: Bias and incompetence or a complex and random world? , 2017, Public understanding of science.

[205]  Vahid Sohrabpour,et al.  Artificial intelligence in supply chain management: A systematic literature review , 2021, Journal of Business Research.

[206]  Hokey Min,et al.  A genetic algorithm approach to developing the multi-echelon reverse logistics network for product returns , 2006 .

[207]  Hokey Min,et al.  Determination of cutoff time for express courier services: a genetic algorithm approach , 2007, Int. Trans. Oper. Res..

[208]  Christoph H. Glock,et al.  Machine scheduling problems in production: A tertiary study , 2017, Comput. Ind. Eng..

[209]  Shahriar Akter,et al.  How to improve firm performance using big data analytics capability and business strategy alignment , 2016 .

[210]  M. Newman,et al.  Finding community structure in very large networks. , 2004, Physical review. E, Statistical, nonlinear, and soft matter physics.

[211]  Loet Leydesdorff,et al.  Bibliometrics/Citation networks , 2015, ArXiv.

[212]  B. Williams,et al.  Operations management. , 2001, Optometry.

[213]  S. C. Lenny Koh,et al.  Blockchain applications in supply chains, transport and logistics: a systematic review of the literature , 2019, Int. J. Prod. Res..

[214]  Michael Pinedo,et al.  Planning and Scheduling in Supply Chains: An Overview of Issues in Practice , 2004 .

[215]  D. Vlachos,et al.  A system dynamics modeling framework for the strategic supply chain management of food chains , 2005 .

[216]  Cordelia Schmid,et al.  Multimodal semi-supervised learning for image classification , 2010, 2010 IEEE Computer Society Conference on Computer Vision and Pattern Recognition.

[217]  Mahdi Abolghasemi,et al.  A new approach for supply chain risk management: Mapping SCOR into Bayesian network , 2015 .

[218]  Shane Legg,et al.  Human-level control through deep reinforcement learning , 2015, Nature.

[219]  P. J. Byrne,et al.  The impact of information sharing and forecasting in capacitated industrial supply chains: A case study , 2006 .

[220]  Benjamin T. Hazen,et al.  Mitigating Supply Chain Risk via Sustainability Using Big Data Analytics: Evidence from the Manufacturing Supply Chain , 2017 .

[221]  Liv Langfeldt,et al.  Expert panels evaluating research: decision-making and sources of bias , 2004 .

[222]  Elliot Bendoly,et al.  Behavioral Operations and Supply Chain Management-A Review and Literature Mapping , 2019, Decis. Sci..

[223]  I. S. Jawahir,et al.  Quantitative modeling and analysis of supply chain risks using Bayesian theory , 2014 .

[224]  S. Goel,et al.  A Simulation-based Method for the Process to Allow Continuous Tracking of Quality, Cost, and Time , 2002, Simul..

[225]  Lifeng Xi,et al.  A neural network ensemble-based model for on-line monitoring and diagnosis of out-of-control signals in multivariate manufacturing processes , 2009, Expert Syst. Appl..

[226]  Rosangela Ballini,et al.  Top-down strategies based on adaptive fuzzy rule-based systems for daily time series forecasting , 2011 .

[227]  Neil Salkind,et al.  Encyclopedia of research design , 2010 .

[228]  Morgan Swink,et al.  How the Use of Big Data Analytics Affects Value Creation in Supply Chain Management , 2015, J. Manag. Inf. Syst..

[229]  Angappa Gunasekaran,et al.  A systematic literature review on machine learning applications for sustainable agriculture supply chain performance , 2020, Comput. Oper. Res..

[230]  Shahriar Akter,et al.  Modelling quality dynamics, business value and firm performance in a big data analytics environment , 2017, Int. J. Prod. Res..

[231]  Gerd J. Hahn,et al.  Value-Based Performance and Risk Management in Supply Chains: A Robust Optimization Approach , 2012 .

[232]  M. Giannakis,et al.  A multi-agent based framework for supply chain risk management , 2011 .

[233]  S. Vijayakumar Bharathi,et al.  Prioritizing and Ranking the Big Data Information Security Risk Spectrum , 2017 .

[234]  Desheng Dash Wu,et al.  Supplier selection: A hybrid model using DEA, decision tree and neural network , 2009, Expert Syst. Appl..

[235]  Duncan McFarlane,et al.  Towards automatically generating supply chain maps from natural language text , 2018 .

[236]  Mihalis Giannakis,et al.  A multi-agent based system with big data processing for enhanced supply chain agility , 2016, J. Enterp. Inf. Manag..

[237]  Manoj Kumar Tiwari,et al.  Bayesian network modelling for supply chain risk propagation , 2018, Int. J. Prod. Res..

[238]  Henry C. W. Lau,et al.  A conceptual fuzzy-genetic algorithm framework for assessing the potential risks in supply chain management , 2008 .

[239]  Fu Tao Zhao,et al.  A Novel Fused Optimization Algorithm of Genetic Algorithm and Ant Colony Optimization , 2016 .

[240]  Gautam Mitra,et al.  Stochastic programming and scenario generation within a simulation framework: An information systems perspective , 2007, Decis. Support Syst..

[241]  Henry G. Small,et al.  Co-citation in the scientific literature: A new measure of the relationship between two documents , 1973, J. Am. Soc. Inf. Sci..

[242]  Lele Zhang,et al.  A parcel network flow approach for joint delivery networks using parcel lockers , 2020, Int. J. Prod. Res..

[243]  Neale R. Smith,et al.  Supply chain dynamics: analysis of inventory vs. order oscillations trade-off , 2006 .

[244]  S. K. Chaharsooghi,et al.  Sustainable Supplier Performance Evaluation and Selection with Neofuzzy TOPSIS Method , 2014, International scholarly research notices.

[245]  Chao Ou-Yang,et al.  A neural networks approach for forecasting the supplier's bid prices in supplier selection negotiation process , 2009, Expert Syst. Appl..