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研究生: 陳家瑜
Chen, Chia-Yu
論文名稱: 服飾搭配社群圖像訊息呈現對資訊串聯影響之研究
The effects of different collocated images of virtual fashion communities on information cascades
指導教授: 楊美雪
Yang, Mei-Hsueh
學位類別: 碩士
Master
系所名稱: 圖文傳播學系
Department of Graphic Arts and Communications
論文出版年: 2019
畢業學年度: 107
語文別: 中文
論文頁數: 72
中文關鍵詞: 服飾搭配社群圖像訊息資訊串聯
英文關鍵詞: virtual fashion communities, collocated images, information cascades
DOI URL: http://doi.org/10.6345/NTNU201901053
論文種類: 學術論文
相關次數: 點閱:136下載:33
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  • 隨著虛擬社群的主題日新月異,以服飾搭配為主題的興起,藉由虛擬社群的機制,時尚潮流消費者能夠抓住當下流行趨勢,掌握最新的服飾搭配技巧,並分享自己的服裝風格。服飾搭配社群的內容主要是視覺上的,其中以圖像為主的訊息更容易受到關注。本研究旨在探討服飾搭配社群中的圖像呈現對資訊串聯之影響,以準實驗法進行,為2(人像:有人像、無人像)× 3(搭配:無搭配、搭配絲巾、搭配絲巾與帽子)雙因子組間設計,共六組實驗組合,依變項為資訊串聯,共90位研究對象。研究結果顯示,人像對資訊串聯具顯著影響;搭配對資訊串聯無顯著影響;人像、搭配兩個變項的交互作用對對資訊串聯並無顯著影響。

    With the rise of virtual communities, consumers can readily catch current trends, the latest coordination of outfits, and also share their own dressing styles. The content within these virtual fashion communities is mainly visual. Compared with other virtual communities, the image information presented, especially for collocated images, mainly focuses on the matching of outfits. With user-generated content, these images can induce popular trends of outfit accessorizing. Furthermore, frequent participation and message spreading influences the recipients of other messages. Through the influence of these messages, consumers often form their own behaviors or attitudes, which strongly influence the purchasing behavior of other customers. This study adopts the quasi-experimental method, which is a 2 (Portrait: with model, without model) x2 (Outfit: without matching, with scarf, with scarf and hat) experimental design, with a total of six experimental groups, according to the variable information cascades. The results of the study showed that: 1) portrait has significant effect on information cascades; 2) outfit has no significant effect on information cascades; and 3) portrait and outfit have no interactive effect on information cascades.

    中文摘要 I Abstract II 目次 III 圖次 V 表次 VI 第壹章 緒論 1 第一節 研究背景與動機 1 第二節 研究目的與問題 6 第三節 名詞釋義 7 第四節 研究範圍與限制 8 第五節 研究流程 9 第貳章 文獻探討 10 第一節 服飾搭配社群的內涵與影響 11 第二節 服飾搭配社群的圖像訊息呈現 16 第三節 資訊串聯的內涵與應用 21 第四節 文獻探討小結 27 第參章 研究設計 28 第一節 研究架構 28 第二節 研究方法 29 第三節 研究對象 31 第四節 研究工具 32 第五節 研究實施 38 第六節 資料分析 40 第肆章 研究結果與討論 41 第一節 信度分析及敘述性統計 41 第二節 不同人像的呈現對資訊串聯影響 44 第三節 搭配配件的多寡對資訊串聯影響 46 第四節 不同人像訊息呈現與搭配配件多寡組合對資訊串聯交互影響 48 第伍章 研究結論與建議 51 第一節 研究結論 51 第二節 研究建議 53 參考文獻 55 一、中文文獻 55 二、英文文獻 56 附錄一 預試問卷 66 附錄二 預試實驗情境 67 附錄三 正式實驗問卷 69 附錄四 正式實驗情境 70

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