Best shopping malls Seoul (KR)

Popular shopping days & hours in Seoul South Korea : Avoid the busy hours by visiting shopping malls during the quiet days as indicated below.

Adjust the filters to find for example your desired busy, quiet, expensive, or highly rated shops.

Costco Wholesale Yangjae (Shopping)
159 Yangjae-daero
4.1

Costco Wholesale Yangjae is most popular around 3 PM on Saturdays. It's most quiet on Sundays.

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For more info visit the website or checkout Google Maps.

Hyundai Premium Outlets Gimpo (Shopping center)
100 Arayuk-ro 152beon-gil, Gochon-eup
4.1

Hyundai Premium Outlets Gimpo is most popular around 3 PM on Sundays. Visitors usually stay 1-2,5 hours here. It's most quiet on Tuesdays.

For more info visit the website or checkout Google Maps.

The Hyundai Seoul (Shopping center)
108 Yeoui-daero
4.4

The Hyundai Seoul is most popular around 3 PM on Saturdays. Visitors usually stay 45 min to 2,5 hr here. It's most quiet on Mondays.

For more info visit the website or checkout Google Maps.

Costco Wholesale Yangpyeong (Shopping)
156 Seonyu-ro
3.9

Costco Wholesale Yangpyeong is most popular around 4 PM on Saturdays. It's most quiet on Sundays.

For more info visit the website or checkout Google Maps.

Paju Premium Outlets (Shopping center)
200 Pilseung-ro, Tanhyeon-myeon
4.1

Paju Premium Outlets is most popular around 3 PM on Sundays. Visitors usually stay 1-2,5 hours here. It's most quiet on Mondays.

For more info visit the website or checkout Google Maps.

Mangwon Market (Market)
27 Poeun-ro 6-gil
4.3

Mangwon Market is most popular around 4 PM on Saturdays. Visitors usually stay 20 min to 1 hr here. It's most quiet on Tuesdays.

For more info visit the website or checkout Google Maps.

Missing venues? This is a free, but limited tool. Use the BestTime software get more world wide foot traffic data in Seoul, South Korea. Filter points of interest (venues) on foot traffic levels, day, time, dwell time, location, ratings, etc. BestTime provides retail foot traffic and foot traffic analytics.