Araştırma Makalesi

PREDICTING VISUAL AESTHETIC PREFERENCES OF LANDSCAPES NEAR HISTORICAL SITES BY FLUENCY THEORY USING SOCIAL MEDIA DATA AND GIS

Sayı: 43 26 Ocak 2021
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PREDICTING VISUAL AESTHETIC PREFERENCES OF LANDSCAPES NEAR HISTORICAL SITES BY FLUENCY THEORY USING SOCIAL MEDIA DATA AND GIS

Öz

There is an interactive relationship between humans and landscapes. Humans inherently assess landscapes by creating spontaneous preferences based on surrounding stimuli. Vision plays a key role in these preferences. Visual preferences are relevant for understanding visual aesthetic liking (VAL), which needs to be evaluated objectively. This study was carried out in Herakleia ad Latmos, comprising Lake Bafa Natural Park and the Latmos-Beşparmak Mountains. The aim of this paper is to predict people’s VAL of historical sites (HS) by applying processing fluency theory to social media data. Among fluency theory metrics, four metrics – visual simplicity, visual symmetry, visual contrast, and visual self-similarity, were used to develop an ordinary least squares (OLS) regression model. Two primary questions are explored in this study: (1) How to quantify spontaneous visits of people near historical sites, and (2) how to estimate preferences of people based on distances to HS regardless of landscape types (either cultural or natural). Results show that people mostly visited three HS out of thirteen historical sites between 2004 and 2020: Kapıkırı Island (HS 1), and the ancient cities of Herakleia (HS 2) and Latmos (HS 3). According to the findings of the OLS regression model, year (t = 8.99, p <.0001), visual simplicity (t = -4.64, p ≤ 0.0001), and visual contrast (t = -2.01, p = 0.04) of the geotagged photos were all statistically significant predictors of VAL. HS 2 had the highest VAL value, followed by HS 1, and HS 3. 

Anahtar Kelimeler

Teşekkür

Special thanks to Prof. Dr. Stefan Mayer and Prof. Dr. Jan Landwehr for their support to calculate fluency metrics. I thank you so much to Dr. Ian Bercovitz for checking the results of the OLS regression model used in this study. I would also like to express my gratitude to Dr. Stephen J. Jordan for revising the manuscript and his valuable comments. Thanks to Yalçın Gülçin for sharing his extensive knowledge about the historical sites.

Kaynakça

  1. Arriaza, M., Cañas-Ortega, J. F., Cañas-Madueño, J. A. & Ruiz-Aviles, P. (2004). Assessing the visual quality of rural landscapes. Landscape and Urban Planning, 69(1), 115-125.
  2. Arslan, E.S. & Örücü, Ö.K. (2020a). Kültürel ekosistem hizmetlerinin sosyal medya fotoğrafları kullanılarak modellenmesi: Eskişehir örneği. Türkiye Ormancılık Dergisi, 21(1), 94-105.
  3. Arslan, E.S. & Örücü, Ö.K. (2020b). MaxEnt modelling of the potential distribution areas of cultural ecosystem services using social media data and GIS. Environment, Development and Sustainability, 1-13.
  4. Atik, M., Işıklı, R. C., Ortaçeşme, V. & Yıldırım, E. (2017). Exploring a combination of objective and subjective assessment in landscape classification: Side case from Turkey. Applied Geography, 83, 130-140.
  5. Barromi-Perlman, E. (2020). Visions of landscape photography in Palestine and Israel. Landscape Research, 45(5), 564-582.
  6. Berlyne, D. E. (1974). Studies in the New Experimental Aesthetics: Steps Toward an Objective Psychology of Aesthetic Oppreciation. Washington, DC: Hemisphere Publishing Corporation. New York: John Wiley & Sons.
  7. Bruns, D., Kühne, O., Schönwald, A. & Theile, S. (2015). Landscape Culture-Culturing Landscapes: The Differentiated Construction of Landscapes. Wiesbaden, Germany: Springer.
  8. Daniel, T. C. (2001). Aesthetic preference and ecological sustainability. In S. Richard, J. Sheppard & H. W. Harshaw (Eds.), Advanced forests and landscape: linking ecology, sustainability and aesthetics (pp. 15-29). Wallingford: CABI Publishing.

Ayrıntılar

Birincil Dil

İngilizce

Konular

Beşeri Coğrafya

Bölüm

Araştırma Makalesi

Yayımlanma Tarihi

26 Ocak 2021

Gönderilme Tarihi

16 Ekim 2020

Kabul Tarihi

26 Ocak 2021

Yayımlandığı Sayı

Yıl 2021 Sayı: 43

Kaynak Göster

APA
Gülçin, D. (2021). PREDICTING VISUAL AESTHETIC PREFERENCES OF LANDSCAPES NEAR HISTORICAL SITES BY FLUENCY THEORY USING SOCIAL MEDIA DATA AND GIS. International Journal of Geography and Geography Education, 43, 265-277. https://doi.org/10.32003/igge.811658
AMA
1.Gülçin D. PREDICTING VISUAL AESTHETIC PREFERENCES OF LANDSCAPES NEAR HISTORICAL SITES BY FLUENCY THEORY USING SOCIAL MEDIA DATA AND GIS. IGGE. 2021;(43):265-277. doi:10.32003/igge.811658
Chicago
Gülçin, Derya. 2021. “PREDICTING VISUAL AESTHETIC PREFERENCES OF LANDSCAPES NEAR HISTORICAL SITES BY FLUENCY THEORY USING SOCIAL MEDIA DATA AND GIS”. International Journal of Geography and Geography Education, sy 43: 265-77. https://doi.org/10.32003/igge.811658.
EndNote
Gülçin D (01 Ocak 2021) PREDICTING VISUAL AESTHETIC PREFERENCES OF LANDSCAPES NEAR HISTORICAL SITES BY FLUENCY THEORY USING SOCIAL MEDIA DATA AND GIS. International Journal of Geography and Geography Education 43 265–277.
IEEE
[1]D. Gülçin, “PREDICTING VISUAL AESTHETIC PREFERENCES OF LANDSCAPES NEAR HISTORICAL SITES BY FLUENCY THEORY USING SOCIAL MEDIA DATA AND GIS”, IGGE, sy 43, ss. 265–277, Oca. 2021, doi: 10.32003/igge.811658.
ISNAD
Gülçin, Derya. “PREDICTING VISUAL AESTHETIC PREFERENCES OF LANDSCAPES NEAR HISTORICAL SITES BY FLUENCY THEORY USING SOCIAL MEDIA DATA AND GIS”. International Journal of Geography and Geography Education. 43 (01 Ocak 2021): 265-277. https://doi.org/10.32003/igge.811658.
JAMA
1.Gülçin D. PREDICTING VISUAL AESTHETIC PREFERENCES OF LANDSCAPES NEAR HISTORICAL SITES BY FLUENCY THEORY USING SOCIAL MEDIA DATA AND GIS. IGGE. 2021;:265–277.
MLA
Gülçin, Derya. “PREDICTING VISUAL AESTHETIC PREFERENCES OF LANDSCAPES NEAR HISTORICAL SITES BY FLUENCY THEORY USING SOCIAL MEDIA DATA AND GIS”. International Journal of Geography and Geography Education, sy 43, Ocak 2021, ss. 265-77, doi:10.32003/igge.811658.
Vancouver
1.Derya Gülçin. PREDICTING VISUAL AESTHETIC PREFERENCES OF LANDSCAPES NEAR HISTORICAL SITES BY FLUENCY THEORY USING SOCIAL MEDIA DATA AND GIS. IGGE. 01 Ocak 2021;(43):265-77. doi:10.32003/igge.811658

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