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				<publisherName>ZIBELINE INTERNATIONAL PUBLISHING</publisherName>
				<title type="subject" xml:lang="en" sort="Information Management and Computer Science">Information Management and Computer Science</title>
				 <abbrev_title></abbrev_title> 
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			<issn type="online">2616-5961</issn>
			<titleGroup>
				<title type="title">BIG DATA ANALYTICS: A REVIEW OF ITS TRANSFORMATIVE ROLE IN MODERN BUSINESS INTELLIGENCE</title>
			</titleGroup>
			<copyright ownership="publisher">Copyright © 2017 zibeline international publishing </copyright>
			<doi origin="zibeline international publishing" registered="yes">https://doi.org/10.26480/imcs.01.2023.28.34</doi>
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				<event type="publication_date" date="29-02-2023"/>
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			<creator xml:id="fou" creatorRole="editor">
					<personName>
						<editorNames>Favour Oluwadamilare Usman</editorNames>
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				<creator xml:id="tst" creatorRole="editor">
					<personName>
						<editorNames>Tula Sunday Tubokirifuruar</editorNames>
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				<creator xml:id="opo" creatorRole="editor">
					<personName>
						<editorNames>Oluwaseun Peter Oyeyemi</editorNames>
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				<creator xml:id="cvi" creatorRole="editor">
					<personName>
						<editorNames>Chidera Victoria Ibeh</editorNames>
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				<creator xml:id="ohd" creatorRole="editor">
					<personName>
						<editorNames>Onyeka Henry Daraojimba</editorNames>
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				<creator xml:id="eae" creatorRole="editor">
					<personName>
						<editorNames>Emmanuel Augustine Etukudoh</editorNames>
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		<citation_keywords>
		    <keywords>Big Data; Business Intelligence; Data Analytics; Modern Business; Review</keywords>
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		     <pdf_url>https://www.theimcs.org/archives2023/issue1/1imcs2023-28-34.pdf</pdf_url>
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	       <volume>6</volume>
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	   <citation_issue>
	        <issue>1</issue>
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	   <citation_pages>
	      <pages>28-34</pages>
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	       <fulltext_html>https://www.theimcs.org/1imcs2023-28-34/</fulltext_html>
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			<abstract type="main" xml:lang="en">
			<title type="main">Summary</title>
					<p>In the dynamic landscape of modern business intelligence, Big Data Analytics has emerged as a transformative force, reshaping the way organizations derive insights from vast and diverse datasets. This paper provides a concise overview of the key themes explored in the comprehensive review of Big Data Analytics and its impact on modern business intelligence. Big Data Analytics represents a paradigm shift in decision-making processes, offering organizations the capability to harness the full potential of their data assets. The review delves into the multifaceted role of Big Data Analytics, emphasizing its significance in strategic planning, risk management, operational optimization, and customer-centric initiatives. Strategic planning takes a quantum leap forward as organizations leverage predictive analytics to anticipate market trends. The integration of analytics-derived insights aligns decision-making with overarching organizational objectives, driving a more informed and forward-thinking approach to strategic initiatives. Risk management becomes more proactive with the integration of Big Data Analytics, particularly in fraud detection and prevention. The ability to process large volumes of data in real-time enhances vigilance, mitigating financial risks associated with fraudulent activities cenario modeling further empowers organizations to assess and address potential risks before they materialize. Operational optimization becomes a focal point as analytics uncovers inefficiencies in manufacturing processes, supply chains, and retail operations. Real-time decision-making in retail, enabled by data analytics, ensures agility and responsiveness to changing market dynamics and customer preferences. Customer-centric initiatives are elevated through personalized marketing campaigns and predictive analytics in customer support. The review explores how Big Data Analytics enables organizations to craft personalized experiences, enhancing customer satisfaction and loyalty. The study encapsulates the transformative journey of Big Data Analytics in modern business intelligence, emphasizing its role in navigating strategic complexities, mitigating risks, optimizing operations, and placing the customer at the center of decision-making processes. The comprehensive review provides insights for organizations seeking to harness the transformative potential of Big Data Analytics in the data-driven era</p>
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