Social Mobile (SoMo), Presentation, and User Experience in Big Data

2017 ◽  
pp. 195-221
Author(s):  
Unhelkar Bhuvan
Keyword(s):  
Big Data ◽  
Warta ISKI ◽  
2019 ◽  
Vol 2 (01) ◽  
pp. 8-18
Author(s):  
Tika Diyanti Mustikarani ◽  
Irwansyah Irwansyah

Dalam perkembangan ekonomi saat ini, pengetahuan teknologi informasi dan komunikasi (TIK) memainkan peran yang sangat penting dalam pertumbuhan dan daya saing organisasi. Pada sektor ekonomi kreatif, subsektor fashion merupakan pemberi kontribusi nomor dua terbesar. Namun sayangnya pemanfaatan teknologi informasi dan komunikasi dalam industri fashion di Indonesia nyatanya belum menggunakan TIK secara maksimal. Saat ini fashion bukan lagi hanya tentang pakaian, melainkan gaya hidup yang tidak dapat terlepas dari manusia modern. Dalam industri fashion, inovasi merupakan faktor penting dalam keputusan pembelian konsumen. Artikel konseptual ini memberikan gambaran mengenai penerapan  ITK dalam konsep e-commerce, big data analytics dan user experience yang terbukti mampu memberikan pengaruh dalam pengembangan industri fashion di Indonesia.


2018 ◽  
Author(s):  
Dominik Moritz ◽  
Danyel Fisher ◽  
Bolin Ding ◽  
Chi Wang

Analysts need interactive speed for exploratory analysis, but big data systems are often slow. With sampling, data systems can produce approximate answers fast enough for exploratory visualization, at the cost of accuracy and trust. We propose optimistic visualization, which approaches these issues from a user experience perspective. This method lets analysts explore approximate results interactively, and provides a way to detect and recover from errors later. Pangloss implements these ideas. We discuss design issues raised by optimistic visualization systems. We test this concept with five expert visualizers in a laboratory study and three case studies at Microsoft. Analysts reported that they felt more confident in their results, and used optimistic visualization to check that their preliminary results were correct.


Data ◽  
2018 ◽  
Vol 4 (1) ◽  
pp. 7 ◽  
Author(s):  
Will Serrano

As digitalization is gradually transforming reality into Big Data, Web search engines and recommender systems are fundamental user experience interfaces to make the generated Big Data within the Web as visible or invisible information to Web users. In addition to the challenge of crawling and indexing information within the enormous size and scale of the Internet, e-commerce customers and general Web users should not stay confident that the products suggested or results displayed are either complete or relevant to their search aspirations due to the commercial background of the search service. The economic priority of Web-related businesses requires a higher rank on Web snippets or product suggestions in order to receive additional customers. On the other hand, web search engine and recommender system revenue is obtained from advertisements and pay-per-click. The essential user experience is the self-assurance that the results provided are relevant and exhaustive. This survey paper presents a review of neural networks in Big Data and web search that covers web search engines, ranking algorithms, citation analysis and recommender systems. The use of artificial intelligence (AI) based on neural networks and deep learning in learning relevance and ranking is also analyzed, including its utilization in Big Data analysis and semantic applications. Finally, the random neural network is presented with its practical applications to reasoning approaches for knowledge extraction.


Sign in / Sign up

Export Citation Format

Share Document