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Ditemukan 150022 dokumen yang sesuai dengan query
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Grace Monica Patanggu
"Privasi data menjadi perhatian krusial dalam lanskap bisnis saat ini, terutama dengan Big Data dan Analytics (BD&A) serta kecerdasan buatan (AI). Diulas melalui empat artikel, lanskap analitika bisnis yang terus berkembang membahas aspek sejarah, tantangan implementasi, dan perannya yang transformatif. Sambil menyoroti manfaat BD&A dan AI, esai menekankan kebutuhan mendesak akan kesadaran dan langkah-langkah proaktif untuk mengatasi isu privasi data. Esai ini menekankan dampak negatif dari pengumpulan data yang luas dan menganjurkan perlindungan informasi pribadi melalui regulasi yang ketat. Diskusinya menekankan kesiapan organisasi dan pengembangan kepemimpinan untuk mengatasi tantangan dalam adopsi BD&A sambil memastikan perlindungan data yang sensitif. Esai ini menyimpulkan dengan mengajak untuk lebih mendalami privasi data melalui studi kasus di masa depan untuk mengurangi risiko dalam penanganan informasi rahasia di lingkungan digital yang dinamis.

Data privacy is a critical concern in today's business landscape, particularly with Big Data and Analytics (BD&A) and artificial intelligence (AI). Explored through four articles, the evolving business analytics landscape addresses historical aspects, implementation challenges, and its transformative role. While highlighting the benefits of BD&A and AI, the essay emphasizes the urgent need for awareness and proactive measures to address data privacy issues. It underscores the drawbacks of extensive data collection and advocates for safeguarding personal information through stringent regulations. The discussion stresses organizational readiness and leadership development to navigate challenges in BD&A adoption while ensuring sensitive data protection. The essay concludes by calling for deeper exploration of data privacy in future case studies to mitigate risks in handling confidential information in the dynamic digital environment."
Depok: Fakultas Ekonomi Dan Bisnis Universitas Indonesia, 2024
MK-pdf
UI - Makalah dan Kertas Kerja  Universitas Indonesia Library
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Cindy Hosea
"E-commerce merupakan online platform yang sedang mengalami pertumbuhan pesat dan memberikan kontribusi terhadap perekonomian internet di Indonesia selama lima tahun terakhir. E-commerce menghasilkan ulasan konsumen yang merupakan sumber informasi bagi para pemangku kepentingan. Penelitian ini melakukan analisis big data terhadap 132.085 ulasan konsumen online mengenai ponsel Xiaomi yang ditulis pada tiga situs e-commerce terbesar di Indonesia: Shopee, Bukalapak, dan Blibli dengan text mining, untuk mengidentifikasi distribusi topik, menganalisis jaringan asosiasi semantik, menemukan perbedaan pada ketiga situs, dan menganalisis hubungan antara topik dan skor penilaian ulasan. Hasil penelitian menunjukkan bahwa logistik merupakan topik yang paling banyak didiskusikan pada ketiga situs, sementara kualitas pelayanan lebih banyak didiskusikan pada Consumer-to-Consumer (C2C) daripada Business-to-Consumer (B2C) e-commerce. Atribut ponsel lebih banyak didiskusikan pada Bukalapak dan Blibli, dengan fokus topik sistem dan CPU & perangkat keras. Jaringan ulasan konsumen Bukalapak membentuk scale-free network, sementara jaringan kedua situs lainnya hanya menunjukkan karakteristik dari small-world network. Hasil regresi logistik ordinal menunjukkan bahwa 5 dari 8 topik yang dibahas dalam komentar ulasan memiliki hubungan negatif dengan skor penilaian, serta ulasan bernilai rendah cenderung memiliki komentar yang lebih panjang dan spesifik. Hasil penelitian dapat bermanfaat sebagai wawasan untuk pengembangan bagi para pemangku kepentingan di industri e-commerce.

E-commerce is a rapidly growing online platform that contributes to Indonesias internet economy during the past five years. E-commerce generates customer reviews as a source of information for stakeholders. This study applies big data analytics toward 132,085 online reviews about Xiaomi mobile phones posted on three major e-commerce websites in Indonesia: Shopee, Bukalapak, and Blibli by text mining, in identifying their distribution of topics, analyzing semantic association network, determining differences between the three websites, also analyzing the relationship between topics and rating score. The findings show that logistics is the most highly discussed topic, while service quality is discussed more in Consumer-to-Consumer (C2C) rather Business-to-Consumer (B2C) e-commerce. Phone attributes are discussed more in Bukalapak and Blibli, focusing on system and CPU & hardware topics. The network of Bukalapaks customer reviews form a scale-free network, and the other two only have the characteristics of a small-world network. The overall results from multilinear regression and ordinal logistic regression show that 5 out of 8 topics reviewed have negative relationships with rating scores, and low-rated reviews tend to have longer and more specific review comments. The findings provide insights for e-commerce stakeholders in supporting further development."
Depok: Fakultas Ekonomi dan Bisnis Universitas Indonesia, 2020
T-Pdf
UI - Tesis Membership  Universitas Indonesia Library
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Steele, Brian
"This textbook on practical data analytics unites fundamental principles, algorithms, and data. Algorithms are the keystone of data analytics and the focal point of this textbook. Clear and intuitive explanations of the mathematical and statistical foundations make the algorithms transparent. But practical data analytics requires more than just the foundations. Problems and data are enormously variable and only the most elementary of algorithms can be used without modification. Programming fluency and experience with real and challenging data is indispensable and so the reader is immersed in Python and R and real data analysis. By the end of the book, the reader will have gained the ability to adapt algorithms to new problems and carry out innovative analyses.
This book has three parts:
(a) Data Reduction: Begins with the concepts of data reduction, data maps, and information extraction. The second chapter introduces associative statistics, the mathematical foundation of scalable algorithms and distributed computing. Practical aspects of distributed computing is the subject of the Hadoop and MapReduce chapter.
(b) Extracting Information from Data: Linear regression and data visualization are the principal topics of Part II. The authors dedicate a chapter to the critical domain of Healthcare Analytics for an extended example of practical data analytics. The algorithms and analytics will be of much interest to practitioners interested in utilizing the large and unwieldly data sets of the Centers for Disease Control and Prevention's Behavioral Risk Factor Surveillance System.
(c) Predictive Analytics Two foundational and widely used algorithms, k-nearest neighbors and naive Bayes, are developed in detail. A chapter is dedicated to forecasting. The last chapter focuses on streaming data and uses publicly accessible data streams originating from the Twitter API and the NASDAQ stock market in the tutorials.
This book is intended for a one- or two-semester course in data analytics for upper-division undergraduate and graduate students in mathematics, statistics, and computer science. The prerequisites are kept low, and students with one or two courses in probability or statistics, an exposure to vectors and matrices, and a programming course will have no difficulty. The core material of every chapter is accessible to all with these prerequisites. The chapters often expand at the close with innovations of interest to practitioners of data science. Each chapter includes exercises of varying levels of difficulty. The text is eminently suitable for self-study and an exceptional resource for practitioners."
Switzerland: Springer International Publishing, 2016
e20510037
eBooks  Universitas Indonesia Library
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"Access to big data, the “new commodity” for the 21st century economies, and its uses and potential abuses, has both conceptual and methodological impacts for the field of comparative and international education. This book examines, from a comparative perspective, the impact of the movement from the so-called knowledge-based economy towards the Intelligent Economy, which is premised upon the application of knowledge. Knowledge, the central component of the knowledge-based economy, is becoming less important in an era that is projected to be dominated and defined by the integration of complex technologies under the banner of the fourth industrial revolution. In this new era that blends the physical with the cyber-physical, the rise of education intelligence means that clients including countries, organizations, and other stakeholders are equipped with cutting-edge data in the form of predicative analytics, and knowledge about global educational predictions of future outcomes and trends. In this sense, this timely volume links the advent of this new technological revolution to the world of governance and policy formulation in education in order to open a broader discussion about the systemic and human implications for education of the emerging intelligent economy. By providing a unique comparative perspective on the Educational Intelligent economy, this book will prove invaluable for researchers and scholars in the areas of comparative education, artificial intelligence and educational policy."
Bingley: Emerald Publishing Limited, 2019
e20511918
eBooks  Universitas Indonesia Library
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Adi Mulyadi
"ABSTRAK
Nama : Adi MulyadiProgram studi : Magister ManajemenJudul : Analisis Segmentasi Konsumen Pada Perusahaan Real Estate Menggunakan Big Data Analytics Studi pada PT. ISPI Pratama LestariPembimbing : Arga Hananto, M.Bus. Studi tentang segmentasi konsumen dipengaruhi oleh kebutuhan perusahaan untuk bersaing dengan kompetitornya dan menciptakan keunggulan kompetitif bagi perusahaannya. Segmentasi produk merupakan salah satu hal utama dalam dunia bisnis, karena kesalahpahaman dalam segmentasi konsumen dapat mengakibatkan berkurangnya pendapatan. Real estate merupakan industri senilai milyaran dolar yang sangat tersegmentasi, dikarenakan karakteristik konsumennya yang beragam. Indonesia merupakan pasar yang potensial dan bertumbuh bagi industri real estate dan perumahan, karena Indonesia memiliki jumlah penduduk yang besar sekitar 260 juta jiwa dan memiliki area geografis yang luas. Untuk menganalisa data dengan jumlah besar tersebut, perusahaan real estate menggunakan Big Data Analytics, sebagai alat untuk mendapatkan masukan yang berarti dari data tersebut. Big Data mulai banyak digunakan sebagai alat untuk mempelajari tentang kondisi atau untuk memprediksi perilaku yang mungkin terjadi melalui berbagai pemodelan analisis data. Penelitian ini menyajikan analisis segmentasi untuk membantu perusahaan pengembang real estate dalam memahami segmentasi konsumen mereka, dengan menggunakan data transaksi penjualan perusahaan periode 2013 - 2017. Analisis segmentasi dalam penelitian ini telah dikembangkan menggunakan cluster analysis, dengan menggunakan metode hierarchical clustering, Elbow Method, dan K-Means. Hasil dari cluster analysis menunjukkan bahwa terdapat 4 segmen konsumen, yang memiliki karakteristik demografis dan preferensi produk yang berbeda. Selain itu, penelitian ini juga melakukan analisis tabulasi silang untuk mengetahui hubungan antar variabel. Selanjutnya dilakukan analisis diskriminan, dari situ diketahui bahwa gaji dan harga jual merupakan 2 variabel yang secara signifikan memberikan pengaruh paling besar terhadap penentuan cluster membership. Setelah mengetahui karakteristik dan melakukan analisa, dapat diusulkan bentuk promosi yang sesuai bagi masing ndash; masing segmen.Kata kunci:Segmentasi konsumen, real estate, big data, cluster analysis, tabulasi silang

ABSTRACT
ABSTRACT Name Adi MulyadiStudy Program Magister of ManagementTitle Customer Segmentation Analysis In Real Estate Using Big Data Analytics A Study In PT. ISPI Pratama LestariCounsellor Arga Hananto, M.Bus. The study of consumer segmentation is influenced by a company 39 s need to compete with its competitors and create a competitive advantage. Product segmentation is one of the main things in the business world, because misunderstanding in consumer segmentation can lead to reduced revenue. Real estate is a multi billion dollar industry that is highly segmented, due to the diverse characteristics of its customers. Indonesia is a potential and growing market for the real estate and housing industries, as Indonesia has a large population around 260 million people and has a large geographical area. To analyze such big amounts of data, real estate companies use Big Data Analytics, as a means to gain meaningful insight from the data. Big Data is widely used as a tool to learn about conditions or to predict behaviors that may occur through various data analysis models. This study presents segmentation analysis to help real estate developers to understand their customer segmentation using company sales transaction data from 2013 to 2017 period. Segmentation analysis in this research has been developed using cluster analysis, with hierarchical clustering, Elbow Method, and K Means. The results of cluster analysis show that there are 4 segments of consumers, which have different demographic characteristics and product preferences. In addition, this study also conducted cross tabulation analysis to determine the relationship between variables. Then from discriminant analysis, it is known that salary and selling price are 2 variables that significantly give the most influence on cluster membership determination. After knowing the characteristics and perform the analysis, it can be proposed the appropriate form of promotion for each segment. Key words Customer segmentation, real estate, big data, cluster analysis, cross tabulation"
Jakarta: Fakultas Ekonomi dan Bisnis Universitas Indonesia, 2018
T50418
UI - Tesis Membership  Universitas Indonesia Library
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Ishmah Naqiyya
"Perkembangan teknologi informasi dan internet dalam berbagai sektor kehidupan menyebabkan terjadinya peningkatan pertumbuhan data di dunia. Pertumbuhan data yang berjumlah besar ini memunculkan istilah baru yaitu Big Data. Karakteristik yang membedakan Big Data dengan data konvensional biasa adalah bahwa Big Data memiliki karakteristik volume, velocity, variety, value, dan veracity. Kehadiran Big Data dimanfaatkan oleh berbagai pihak melalui Big Data Analytics, contohnya Pelaku Usaha untuk meningkatkan kegiatan usahanya dalam hal memberikan insight yang lebih luas dan dalam. Namun potensi yang diberikan oleh Big Data ini juga memiliki risiko penggunaan yaitu pelanggaran privasi dan data pribadi seseorang. Risiko ini tercermin dari kasus penyalahgunaan data pribadi Pengguna Facebook oleh Cambridge Analytica yang berkaitan dengan 87 juta data Pengguna. Oleh karena itu perlu diketahui ketentuan perlindungan privasi dan data pribadi di Indonesia dan yang diatur dalam General Data Protection Regulation (GDPR) dan diaplikasikan dalam Big Data Analytics, serta penyelesaian kasus Cambridge Analytica-Facebook. Penelitian ini menggunakan metode yuridis normatif yang bersumber dari studi kepustakaan. Dalam Penelitian ini ditemukan bahwa perlindungan privasi dan data pribadi di Indonesia masih bersifat parsial dan sektoral berbeda dengan GDPR yang telah mengatur secara khusus dalam satu ketentuan. Big Data Analytics juga memiliki beberapa implikasi dengan prinsip perlindungan privasi dan data pribadi yang berlaku. Indonesia disarankan untuk segera mengesahkan ketentuan perlindungan privasi dan data pribadi khusus yang sampai saat ini masih berupa rancangan undang-undang.

The development of information technology and the internet in various sectors of life has led to an increase in data growth in the world. This huge amount of data growth gave rise to a new term, Big Data. The characteristic that distinguishes Big Data from conventional data is that Big Data has the characteristic of volume, velocity, variety, value, and veracity. The presence of Big Data is utilized by various parties through Big Data Analytics, for example for Corporation to incurease their business activities in terms of providing broader and deeper insight. But this potential provided by Big Data also comes with risks, which is violation of one's privacy and personal data. One of the most scandalous case of abuse of personal data is Cambridge Analytica-Facebook relating to 87 millions user data. Therefor it is necessary to know the provisions of privacy and personal data protection in Indonesia and which are regulated in the General Data Protection (GDPR) and how it applied in Big Data Analytics, as well as the settlement of the Cambridge Analytica-Facebook case. This study uses normative juridical methods sourced from library studies. In this study, it was found that the protection of privacy and personal data in Indonesia is still partial and sectoral which is different from GDPR that has specifically regulated in one bill. Big Data Analytics also has several implications with applicable privacy and personal data protection principles. Indonesia is advised to immediately ratify the provisions on protection of privacy and personal data which is now is still in the form of a RUU."
Depok: Fakultas Hukum Universitas Indonesia, 2020
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UI - Skripsi Membership  Universitas Indonesia Library
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"Corporations and governmental agencies of all sizes are embracing a new generation of enterprise-scale business intelligence (BI) and data warehousing (DW), and very often appoint a single senior-level individual to serve as the enterprise BI/DW program manager. This book is the essential guide to the incremental and iterative build-out of a successful enterprise-scale BI/DW program comprised of multiple underlying projects, and what the enterprise program Manager must successfully accomplish to orchestrate the many moving parts in the quest for true enterprise-scale business intelligence and data warehousing.
Author Alan Simon has served as an enterprise business intelligence and data warehousing program management advisor to many of his clients, and spent an entire year with a single client as the adjunct consulting director for a $10 million enterprise data warehousing (EDW) initiative. He brings a wealth of knowledge about best practices, risk management, organizational culture alignment, and other Critical Success Factors (CSFs) to the discipline of enterprise-scale business intelligence and data warehousing.
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Waltham, MA: Morgan Kaufmann, 2015
e20426986
eBooks  Universitas Indonesia Library
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"This book presents a language integrated query framework for big data. The continuous, rapid growth of data information to volumes of up to terabytes (1,024 gigabytes) or petabytes (1,048,576 gigabytes) means that the need for a system to manage and query information from large scale data sources is becoming more urgent. Currently available frameworks and methodologies are limited in terms of efficiency and querying compatibility between data sources due to the differences in information storage structures. For this research, the authors designed and programmed a framework based on the fundamentals of language integrated query to query existing data sources without the process of data restructuring. A web portal for the framework was also built to enable users to query protein data from the Protein Data Bank (PDB) and implement it on Microsoft Azure, a cloud computing environment known for its reliability, vast computing resources and cost-effectiveness."
Switzerland: Springer Nature, 2019
e20509153
eBooks  Universitas Indonesia Library
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"This book constitutes the refereed proceedings of the 4th International Conference on Soft Computing, Intelligent Systems, and Information Technology, ICSIIT 2015, held in Bali, Indonesia, in March 2015"
Berlin: Springer, 2015
004 INT
Buku Teks  Universitas Indonesia Library
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Jo, Taeho
"This book discusses text mining and different ways this type of data mining can be used to find implicit knowledge from text collections. The author provides the guidelines for implementing text mining systems in Java, as well as concepts and approaches. The book starts by providing detailed text preprocessing techniques and then goes on to provide concepts, the techniques, the implementation, and the evaluation of text categorization. It then goes into more advanced topics including text summarization, text segmentation, topic mapping, and automatic text management."
Switzerland: Springer Cham, 2019
e20501288
eBooks  Universitas Indonesia Library
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