Matches in SemOpenAlex for { <https://semopenalex.org/work/W4296376727> ?p ?o ?g. }
- W4296376727 endingPage "264" @default.
- W4296376727 startingPage "237" @default.
- W4296376727 abstract "The proliferating demands of consumers today have sparked the need for ECRM, leveraging the technological advancements in MIS and its applications. This chapter elaborates tracking and maintaining ECRM by means of big data analytics tools and artificial intelligence algorithms. It elucidates the predictions and forecasts a business makes based on consumer behaviour. The chapter further delves into the various avenues of artificial intelligence (AI). The taxonomy of AI is explained, and its decision making capability is applied to design and simulate effective SCM systems. Various AI methods are holistically applied to the FMCG supply chain context. In this chapter, the role of big data analytics in aiding the enterprises to maintain ECRM by studying consumer preferences and choices is explored, further advancing into its applications in maintaining FMCG supply chain. This research report provides the various methods of AI used in supply chain and the data analytics tools employed in maintaining ECRM and the FMCG supply chain." @default.
- W4296376727 created "2022-09-20" @default.
- W4296376727 creator A5079142205 @default.
- W4296376727 date "2022-06-30" @default.
- W4296376727 modified "2023-09-25" @default.
- W4296376727 title "Application of MIS in E-CRM" @default.
- W4296376727 cites W1480376833 @default.
- W4296376727 cites W1556294432 @default.
- W4296376727 cites W1612366852 @default.
- W4296376727 cites W1966778069 @default.
- W4296376727 cites W1968519101 @default.
- W4296376727 cites W1973747955 @default.
- W4296376727 cites W1976239864 @default.
- W4296376727 cites W1987514906 @default.
- W4296376727 cites W1991911549 @default.
- W4296376727 cites W2003574311 @default.
- W4296376727 cites W2007343074 @default.
- W4296376727 cites W2023061332 @default.
- W4296376727 cites W2029411275 @default.
- W4296376727 cites W2031168880 @default.
- W4296376727 cites W2035801516 @default.
- W4296376727 cites W2038779648 @default.
- W4296376727 cites W2040640338 @default.
- W4296376727 cites W2046321562 @default.
- W4296376727 cites W2051124757 @default.
- W4296376727 cites W2058476990 @default.
- W4296376727 cites W2063630562 @default.
- W4296376727 cites W2063719782 @default.
- W4296376727 cites W2064734070 @default.
- W4296376727 cites W2072750586 @default.
- W4296376727 cites W2074216016 @default.
- W4296376727 cites W2074697260 @default.
- W4296376727 cites W2076111670 @default.
- W4296376727 cites W2077093690 @default.
- W4296376727 cites W2080223813 @default.
- W4296376727 cites W2089119433 @default.
- W4296376727 cites W2106577732 @default.
- W4296376727 cites W2116725038 @default.
- W4296376727 cites W2124708286 @default.
- W4296376727 cites W2132075088 @default.
- W4296376727 cites W2136926091 @default.
- W4296376727 cites W2143258743 @default.
- W4296376727 cites W2145339207 @default.
- W4296376727 cites W2147953360 @default.
- W4296376727 cites W2155456580 @default.
- W4296376727 cites W2155567514 @default.
- W4296376727 cites W2157963257 @default.
- W4296376727 cites W2158938196 @default.
- W4296376727 cites W2175173276 @default.
- W4296376727 cites W2299859864 @default.
- W4296376727 cites W2302800291 @default.
- W4296376727 cites W2322113731 @default.
- W4296376727 cites W2334266275 @default.
- W4296376727 cites W2403510908 @default.
- W4296376727 cites W2460037126 @default.
- W4296376727 cites W2463724010 @default.
- W4296376727 cites W2468048485 @default.
- W4296376727 cites W2480692263 @default.
- W4296376727 cites W2507562171 @default.
- W4296376727 cites W2508563792 @default.
- W4296376727 cites W2594395650 @default.
- W4296376727 cites W2602799623 @default.
- W4296376727 cites W2624147939 @default.
- W4296376727 cites W2650941562 @default.
- W4296376727 cites W2748667071 @default.
- W4296376727 cites W2752429708 @default.
- W4296376727 cites W2754106606 @default.
- W4296376727 cites W2762118997 @default.
- W4296376727 cites W2765397828 @default.
- W4296376727 cites W2778911205 @default.
- W4296376727 cites W2780508324 @default.
- W4296376727 cites W2789434022 @default.
- W4296376727 cites W2800222242 @default.
- W4296376727 cites W2899856450 @default.
- W4296376727 cites W2904815033 @default.
- W4296376727 cites W2912275277 @default.
- W4296376727 cites W2919115771 @default.
- W4296376727 cites W2934302500 @default.
- W4296376727 cites W2957879630 @default.
- W4296376727 cites W2964099675 @default.
- W4296376727 cites W2989684529 @default.
- W4296376727 cites W3000666106 @default.
- W4296376727 cites W3005444529 @default.
- W4296376727 cites W3007397514 @default.
- W4296376727 cites W3008189558 @default.
- W4296376727 cites W3011578045 @default.
- W4296376727 cites W3015034699 @default.
- W4296376727 cites W3087610690 @default.
- W4296376727 cites W3125342939 @default.
- W4296376727 cites W3125939023 @default.
- W4296376727 cites W4233888153 @default.
- W4296376727 doi "https://doi.org/10.4018/978-1-6684-5386-5.ch010" @default.
- W4296376727 hasPublicationYear "2022" @default.
- W4296376727 type Work @default.
- W4296376727 citedByCount "1" @default.
- W4296376727 countsByYear W42963767272023 @default.
- W4296376727 crossrefType "book-chapter" @default.
- W4296376727 hasAuthorship W4296376727A5079142205 @default.