METODE KUANTITATIF ERA BIG DATA: Teori dan Implementasi
Keywords:
Metode, Kuantitatif, Big, DataSynopsis
Buku ini hadir sebagai respons atas pesatnya perkembangan teknologi dan ledakan data (big data) yang mengubah paradigma analisis kuantitatif di berbagai bidang, baik ekonomi, sosial, kesehatan, maupun bisnis. Perkembangan era big data tidak hanya membawa tantangan dalam hal volume, kecepatan, dan keragaman data, tetapi juga membuka peluang besar bagi peneliti dan praktisi untuk memperoleh wawasan yang lebih mendalam dan akurat. Metode kuantitatif konvensional perlu diperkaya dan diadaptasi dengan pendekatan komputasi modern, pembelajaran mesin (machine learning), serta teknik analisis data berskala besar. Buku ini disusun untuk menjembatani kesenjangan antara teori statistik klasik dan praktik analisis data di era digital. Materi dalam buku ini mencakup: (1) Pengantar Era Big Data dan Transformasi Metodologi Kuantitatif, (2) Paradigma Baru dalam Analisis Data: Dari Small Data ke Big Data, (3) Fondasi Matematika dan Statistik untuk Big Data Analytics, (4) Probabilitas dan Inferensi Statistik dalam Konteks Big Data, (5) Arsitektur Sistem Big Data: Hadoop, Spark, dan Cloud Computing, (6) Database NoSQL dan Sistem Penyimpanan Terdistribusi, (7) Visualisasi Data untuk Dataset Berskala Besar, (8) Time Series Analysis pada Data Berskala Masif, (9) Supervised Learning: Classification dan Regression pada Big Data, (10) Ensemble Methods dan Model Selection Strategies, (11) Network Analysis dan Graph Mining, (12) Studi Kasus: Implementasi Big Data Analytics dalam Berbagai Sektor, (13) Etika Data, Privacy, dan Tantangan Masa Depan Big Data Analytics.
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