"poeme d amour" App Store Keywords Research Case | ASOTools
1.Preparing Research App Store Keywords
When you are working on App Store Optimization Services, in order to help you choose the best App Store keywords in Google Play or Apple App Store , it is worth studying this report carefully. This keyword research report about “poeme d amour” will use the data collected by ASOTools for a comprehensive analytic. For example, long tail keyword data: “texting now”, “charge point”, “brabus”, “tpain”, “wallpaper simple”, “o'reilly”.
If you are doing App Store keyword research with the keyword inspector, we recommend that you create a specification for your app store keyword optimization. For instance:
Question Keywords |
User Keywords |
The action Keywords |
Function Keywords |
The location Keywords |
Question keywords describe why users search for applications. | User Keywords represent the role your target audience plays when using the application. | The action keyword specifies how to handle your application and use it. |
Function keywords are basic functions of an application. | The location keyword describes where people use your application. |
Well, after establishing the theoretical basis of App Store optimization, let’s make a case analytic and study the specific data performance of this keyword in Google Store and Apple App store with app store optimization tools.
2.Research Keyword “poeme d amour” with Google Play Data
Extended Long tail words
Obviously, once the root of the core keyword is determined, you need to expand more long tail words. For example, I have collected the top 5 long tail words related to the keyword poeme d amour from the ASOTools, as follows:
Top 5 Keywords | Search Volume | KD | Search results | Head apps |
poeme d amour gratuit 2020 | ≤5 | 3 | 250+ | 71 |
poeme d amour sms en anglais | ≤5 | 1 | 250+ | 60 |
poeme d amour gratuit en anglais | ≤5 | 30 | 250+ | 76 |
poeme d amour sms | ≤5 | 30 | 250+ | 71 |
poeme d amour sms 2019 | ≤5 | 30 | 250+ | 65 |
The search volume of the core keyword poeme d amour in Google App Store reached 39, its difficulty level reached 3, and the number of apps related to it reached 250+, among them, there are 59 apps with more than 1,000 comments, and the top 10 apps are selected. They are:
# | App Icon | App Name | Top1 Keyword | Search Volume | KD |
1 | Messages et Poemes d'Amour en français | poemes d amour | 39 | 3 | |
2 |
|
poèmes d'amour | poemes | 33 | 2 |
3 |
|
SMS d'Amour 2020 ???? | d'amour | 9 | 16 |
4 |
|
sms d'amour très touchants 2020 | sms d'amour | 28 | 30 |
5 |
|
Romantique Messages d'amour ♥ SMS d'amour | application pour l'amour | ≤5 | 10 |
6 |
|
SMS d'amour romantique et Lettres d'amour | léttre d'amour | 24 | 2 |
7 |
|
Messages d'amour romantique 2020 | romantique | 29 | 9 |
8 |
|
je t’aime sms d'amour 2020 | je taime | 43 | 10 |
9 |
|
SMS d'amour 2020 : Messages d'amour Touchant | proverbes d'amour 2020 | ≤5 | 30 |
10 |
|
Messages d'amour et Séduction | citation d'amour en creole | ≤5 | 30 |
The top 5 keywords mentioned above are just one of the selected cases. You can select keywords in any range according to your own criteria. Generally, the search volume for keywords should be between 20 and 80, the difficulty should be less than 50, and then analyze the keyword data of the competing App according to the keywords.
ASOTools Suggested Keyword
Top 5 Keywords | Search Volume | KD | Search results | Head apps |
tvitr | 93 | 39 | 248 | 163 |
tvitrer | 93 | 32 | 250+ | 152 |
trum | 80 | 61 | 250+ | 154 |
messeng | 78 | 79 | 250+ | 147 |
imasseger | 78 | 59 | 250+ | 236 |
In the era of big data analysis of app store keywords, computers are sometimes smarter than us. Therefore, ASOTools provides us with a new function, that is, based on your search target keywords, it is extremely intelligent to recommend accurate keywords for potential traffic.
Top 10 apps related to the App Store keywords:
# | App Icon | App Name | Top1 Keyword | Search Volume | KD |
1 |
|
twiiit | 93 | 73 | |
2 |
|
Txiicha Lite for Twitter: Best Chronological TL | tiveter | 93 | 40 |
3 |
|
Quitter for Twitter | tueter | ≤5 | 17 |
4 |
|
TwitPane | twitterrific | 20 | 38 |
5 |
|
Tumblr | tumblr | 68 | 48 |
6 |
|
Video Downloader for Twitter | برنامج تحميل الفيديو من تويتر | ≤5 | 12 |
7 |
|
redt | 87 | 53 | |
8 |
|
Twitch: Livestream Multiplayer Games & Esports | twithr | 93 | 30 |
9 |
|
Twidere for Twitter | tweedle | 6 | 22 |
10 |
|
Friendly For Twitter | witter 3 | ≤5 | 20 |
These five keywords: “tvitr”, “tvitrer”, “trum”, “messeng”, “imasseger”. If you think the traffic is good, you can seriously consider optimizing it into your App store. You can also carefully study these ten apps: “Twitter”, “Txiicha Lite for Twitter: Best Chronological TL”, “Quitter for Twitter”, “TwitPane”, “Tumblr”, “Video Downloader for Twitter”, “Reddit”, “Twitch: Livestream Multiplayer Games & Esports”, “Twidere for Twitter”, “Friendly For Twitter”, look at their optimized core words.
3.Conclusion
Now, do you know how to find the best keywords? The above is a case of my research keyword “poeme d amour”. You can also research keywords according to this idea in the process of the app store optimization, and then use the intelligent services provided by ASOTools.
There are many App store keyword tool, which can be used together to ensure the accuracy of keyword data. I recommend these ASOTools: