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In the era of short video, how to ensure that works are more popular?
2022-07-02 07:54:00 【Xiaoyi We Media】
Now there are more and more users of short videos , Everyone swipes short videos almost every day , So relatively speaking, short videos still have a great influence on us , So how should we create , How to ensure that your works can be more popular ? Let's share with you .

1、 Rub hot spots
Rubbing hot spots is one of the ways to get popular quickly , This is also the key to quickly make your works popular , We can see the hot list of Tiktok in Tiktok , It will update the latest hot spots in real time every day , And hot music , You can make reference on it , Maybe it will bring you a lot of traffic !
2、 Video co production
Tiktok “ CO production ” function , You can take part in CO shooting with popular bloggers , In this way, you can better expose your video .
3、 Positioning Publishing
At the time of publication , There is one “ Where are you ” The option to , You can choose the positioning according to your own needs , The advantage of positioning is that your works can be quickly discovered by users in the same city , So as to attract attention to your account , Accumulate a certain number of fans .

4、 Duration
Tiktok is the era of short video , So your work should not be too lengthy , Too long will lead to aesthetic fatigue of the audience , So that your video will be brushed away immediately , Will not be recommended .
5、 Topic challenge
The hot topic challenge officially launched by Tiktok , The platform will give a certain flow tilt according to the quality of video content , This is also the easiest 、 The most labor-saving and popular way . According to your own content , Choose a topic to participate in the challenge , As long as your video is good enough , There will be a chance to make popular recommendations ~

Finally, I really can't find creative materials in my field , You can go to Yizhuan to have a look , In Yizhuan, you can select popular works in your related fields with one click , There are also works released at the latest time , Can help you create , Get inspiration .
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