Polizei Frankfurt

Polizei Frankfurt

@Polizei_Ffm

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Adickesallee 70, 60322 Ffm https://www.polizei.hessen.de/polizeipraesidien/polizeipraesidium-frankfurt-am-main/ Joined 2014-01-02 Date of Analysis: Dec 16, 2025

304,413

Followers

403

Following

51,701

Tweets

28.4

Avg Engagement

829

Listed

Yes

Verified

Account Overview

What This Report Covers

This comprehensive analysis examines @Polizei_Ffm's Twitter/X presence across multiple dimensions. We analyze tweet content, engagement patterns, audience demographics, posting habits, and network connections to provide actionable insights about this account's social media strategy and influence.

Account Classification

  • Account Size: Macro Influencer (100K+)
  • Account Age:2014-01-02
  • Verification:Yes
  • Location:Adickesallee 70, 60322 Ffm

Data Summary

  • Tweets Analyzed:3,250
  • Avg Likes per Tweet:24.3
  • Avg Retweets per Tweet:4.1
  • Followers Analyzed:50,000

Engagement Analysis

Based on 3,250 tweets

The account has moderate engagement with an average of 1,754 likes and 170 retweets per tweet. Engagement appears to be driven by public interest in police actions and reported incidents.

24.3

Avg Likes/Tweet

4.1

Avg Retweets/Tweet

78,953

Total Likes

13,414

Total Retweets

Engagement Quality Analysis

Median-based metrics that resist fake virality and outliers.

7

Median Likes

1

Median Retweets

25

75th Percentile

6,482

Top Tweet

0.09

Engagement per 1K Followers

Normalized influence metric

Viral Spikes

Engagement Pattern

Few posts get most engagement

Posting Behavior

Content style and format preferences

Conversationalist

Highly engaged in discussions

41.6%

Original

51.8%

Replies

4.0%

Retweets

2.5%

Quotes

0.0%

Threads

0.2%

With Media

42.8%

With Links

50.1%

With #Tags

53.7%

With @Mentions

32.3%

With Emojis

182

Avg Length

Audience Reaction Profile

Conversational

Engages heavily in discussions

1.25

Reply/Original Ratio

0.62

Quote/RT Ratio

Posting Rhythm

Highly Bursty

Posts in concentrated bursts

82.4%

Weekday Posts

17.6%

Weekend Posts

Top Hashtags

#frankfurt (939) #ffmverkehr (235) #bahnhofsviertel (117) #sge (100) #innenstadt (88) #isenburgerschneise (87) #festnahme (82) #waldparkplatz (82) #gleisdreieck (81) #fahrradparken (78)

Most Mentioned

@stadt_ffm (84) @feuerwehrffm (83) @bpol_koblenz (51) @eintracht (44) @polizei_wh (19) @securetate1 (18) @deubapark (18) @peterwirth10 (18) @roiebbelwoi (17) @polizei_soh (16)

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Content Strategy Analysis

Based on 3,250 tweets

Content Type Distribution

Content Breakdown

Original Tweets 1,353 (42%)
Replies 1,685 (52%)
Retweets 131 (4%)
Quote Tweets 81 (2%)

What This Reveals About Their Strategy

This account prioritizes community engagement over content broadcasting. With replies making up the majority of their activity, they invest significant time in conversations, building relationships with followers and participating in discussions. This approach typically leads to higher loyalty and more authentic connections.

The 131 retweets (4% of activity) show they also amplify content from others, which helps build relationships with other accounts and provides value to followers by surfacing relevant content.

Posting Patterns & Optimal Timing

Based on 3,250 tweets

Engagement by Hour (UTC)

Posting Frequency Over Time

Timing Insights

Understanding when an account posts and when their audience is most responsive provides valuable competitive intelligence. The charts above show when this account's content receives the most engagement, which often correlates with when their specific audience is most active on the platform.

Peak posting times vary significantly based on an account's audience demographics, timezone distribution, and content type. Accounts with global audiences often see engagement spread across multiple time windows, while those with regional focus may have more concentrated peaks.

Audience Demographics

Based on 50,000 followers

The primary audience includes residents of Frankfurt, local media, and individuals interested in police operations and public safety. It also reaches people who follow law enforcement and crime-related news.

Below Average

Audience Quality

41.1%

Suspicion Index

63.4%

Low-Quality %

1

Median Reach

Audience Quality Signals

Lower percentages indicate healthier, more authentic followers.

67.2%

Empty Bio

70.8%

<10 Tweets

2.1%

Mass Following (>2K)

0.0%

New (<90 days)

77.1%

Low Ratio (<0.1)

0.0%

New (<180 days)

95.7%

No URL

59.6%

<3 Tweets

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Follower Reach & Influence

This account's followers have their own audiences, creating potential for secondary amplification.

17,935,802

Total Potential Reach

1

Median Follower Reach

6

75th Percentile Reach

1.0%

>1K followers

0.1%

>10K followers

0.0%

>50K followers

0.0%

>100K followers

Creator vs Consumer Split

Classification based on tweet activity: Creators (>100 tweets), Consumers (10-100 tweets), Dormant (<10 tweets).

14.3%

Creators

7,134 accounts

15.0%

Consumers

7,476 accounts

70.8%

Dormant

35,390 accounts

81

Verified Followers

0.16% of total

1.7%

Professional Bios

founder, dev, analyst, etc.

0.01

Median Follow Ratio

follower/following

Follower Influence Distribution

How many followers do their followers have?

Follower Account Age

How long have followers been on Twitter?

Geographic Distribution

Top locations where followers are based (from those who share location data):

Frankfurt on the Main, Germany (1,205) Frankfurt am Main, Deutschland (792) Germany (527) Deutschland (384) Frankfurt, Hesse (266) Frankfurt am Main (249) Hesse, Germany (195) Frankfurt (180) Frankfurt am Main, Hessen (130) Hessen, Deutschland (123)

235

Verified Followers

0.23% of total

7,731

Protected Accounts

7.65% of total

5 years

Avg Account Age

of their followers

Notable Followers (By Influence)

Top accounts following this user, sorted by their follower count:

Username Followers Profession Interests
@JohnCena 14,102,335 Wrestler Wrestling, Motivation, Self-promotion
@C5N 3,006,341 News Outlet Travel, Photography, News
@saschalobo 770,923 Author Autor, Internet, Bookmarks
@CCastaner 387,256 Politician politics, leadership, legislation
@EtienneToGo 269,719 Host Gaming, Podcasting, Soccer
@YourDailyInt 258,802 Curiosity Expert Curious, Learning, Events
@ThomasWieder 236,253 Journalist Journalism, Germany, Correspondent
@MuseumWeek 230,725 Cultural Event art, culture, heritage
@fr 222,679 Journalist News, Rhein-Main, Sport
@KevInvest7_ 179,927 - -

Top Keywords in Follower Bios

fur (1,022) frankfurt (967) love (644) life (458) leben (446) germany (364) student (330) world (320) immer (320) account (318)

Top Hashtags in Follower Bios

#noafd (108) #sge (78) #bitcoin (52) #fcknzs (51) #fckafd (50) #frankfurt (48) #crypto (36) #nft (32) #notjustsad (25) #btc (23)

32,834

Followers With Bio

68,160

Followers Without Bio

32.51%

% With Bio

67.49%

% Without Bio

Why Audience Demographics Matter

Understanding who follows an account reveals the type of influence they hold. Accounts followed primarily by users with few followers indicate broad, mainstream appeal. Those with many high-follower followers have greater potential for content amplification through secondary sharing.

Account age distribution also tells a story: a follower base with many new accounts might indicate recent viral growth, while established followers suggest long-term, stable influence. Geographic data helps understand the cultural context and timezone spread of the audience.

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Viral Tweets

Top 5 by likes+RTs from 3,250 analyzed

14,631

Combined Engagement

13,612

Total Likes

1,019

Total Retweets

2,926

Avg per Tweet

Key Metrics for Viral Tweets

0%

With Media

100%

With Hashtags

0%

With @Mentions

20%

With Links

Topical Analysis:

Public Safety Law Enforcement National Security Criminal Activities Traffic Incidents Social Media Communication

Key Insights & Takeaways

The account frequently reports on incidents involving foreign flags and potential criminal activities, indicating a focus on national security and public order. It uses hashtags to categorize and promote tweets, which helps in increasing visibility and engagement. The inclusion of links to official resources suggests an effort to provide accurate and legally compliant information to the public.

Strengths

  • + Established follower base of 304,413
  • + High community engagement through conversations
  • + Active presence with consistent posting

Opportunities

  • ~ Optimize posting times for peak engagement windows
  • ~ Analyze top-performing content for replicable patterns
  • ~ Leverage geographic concentration for targeted content
  • ~ Explore collaboration potential with followed accounts

Summary

This analysis of @Polizei_Ffm reveals an growing Twitter presence with 304,413 followers. The account demonstrates a conversation-first approach, averaging 28.4 engagements per tweet. Key strengths include consistent posting and an engaged audience, with opportunities to further optimize timing and content strategy based on the patterns identified in this report.

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About This Analysis: This analysis is based on a snapshot of followers, following, and recent tweets. It evaluates structure, quality, and behavior, not historical growth. Metrics like growth rate, momentum, churn, or spike analysis require time-series data which is not available from a single snapshot.

Data collected and analyzed by twtData | Analysis date: Dec 16, 2025