02030101 TMBA TMBA #tm_1th_2 > li:nth-child(3) > ul > li.toy_0 > a 02030101 TMBA TMBA #mprovide > div > div > div.box.box1 > ul > li:nth-child(1) > a 02030201 IMBA IMBA #tm_1th_2 > li:nth-child(3) > ul > li.toy_1 > a 02030201 IMBA IMBA #mprovide > div > div > div.box.box1 > ul > li:nth-child(2) > a 02030301 EMBA EMBA #tm_1th_2 > li:nth-child(3) > ul > li.toy_2 > a 02030301 EMBA EMBA #mprovide > div > div > div.box.box1 > ul > li:nth-child(4) > a 02030401 PMBA PMBA #tm_1th_2 > li:nth-child(3) > ul > li.last.toy_3 > a 02030401 PMBA PMBA #mprovide > div > div > div.box.box1 > ul > li:nth-child(3) > a 02040101 FMBA FMBA #tm_1th_2 > li:nth-child(4) > ul > li.toy_0 > a 02040101 FMBA FMBA #mprovide > div > div > div.box.box3 > ul > li:nth-child(1) > a 02040201 MFE MFE #tm_1th_2 > li:nth-child(4) > ul > li.toy_1 > a 02040201 MFE MFE #mprovide > div > div > div.box.box3 > ul > li:nth-child(3) > a 02040401 IMMBA IMMBA #tm_1th_2 > li:nth-child(4) > ul > li.toy_2 > a 02040401 IMMBA IMMBA #mprovide > div > div > div.box.box3 > ul > li:nth-child(2) > a 02040501 IMMS IMMS #tm_1th_2 > li:nth-child(4) > ul > li.toy_3 > a 02040501 IMMS IMMS #mprovide > div > div > div.box.box3 > ul > li:nth-child(4) > a 02040601 SEMBA SEMBA #tm_1th_2 > li:nth-child(4) > ul > li.toy_4 > a 02040601 SEMBA SEMBA #mprovide > div > div > div.box.box3 > ul > li:nth-child(6) > a 02040701 GP GP #tm_1th_2 > li:nth-child(4) > ul > li.last.toy_5 > a 02040701 GP GP #mprovide > div > div > div.box.box3 > ul > li:nth-child(7) > a 02040701 admission admission #txt > div.sub0303.mt_20 > div.btn_wrap > a 02040701 GP GP #mprovide > div > div > div.box.box3 > ul > li:nth-child(7) > a
본문 바로가기 사이트 메뉴 바로가기 주메뉴 바로가기

Enhancing Social Media Analysis with Visual Data Analytics: A Deep Learning Approach

MIS Quarterly2020-12

Shin, Donghyuk | He, Shu | Lee, Gene Moo | Whinston, Andrew B. | Cetintas, Suleyman | Lee, Kuang-Chih

This research methods article proposes a visual data analytics framework to enhance social media research using deep learning models. Drawing on the literature of information systems and marketing, complemented with data-driven methods, we propose a number of visual and textual content features including complexity, similarity, and consistency measures that can play important roles in the persuasiveness of social media content. We then employ state-of-the-art machine learning approaches such as deep learning and text mining to operationalize these new content features in a scalable and systematic manner. For the newly developed features, we validate them against human coders on Amazon Mechanical Turk. Furthermore, we conduct two case studies with a large social media dataset from Tumblr to show the effectiveness of the proposed content features. The first case study demonstrates that both theoretically motivated and data-driven features significantly improve the model's power to predict the popularity of a post, and the second one highlights the relationships between content features and consumer evaluations of the corresponding posts. The proposed research framework illustrates how deep learning methods can enhance the analysis of unstructured visual and textual data for social media research.

Publisher
MIS Quarterly
Issue Date
2020-12
Article Type
Article
Citation
MIS Quarterly, Vol.44, No.4, pp.1459 - 1492
ISSN
0276-7783
DOI
10.25300/misq/2020/14870
만족도조사

이 페이지에서 제공하는 정보에 대하여 만족하십니까?

콘텐츠담당자 : 주선희 연락처 : 02-958-3602

교수 & 연구

관심자등록

KCB ISSUE