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Pixalate’s Q3 2025 Report Finds 43% of CTV Bundle IDs Were Malformed, Unidentified, &/or Fraudulent Across Roku, Amazon Fire TV, Apple TV, LG & Samsung Smart TV

LONDON, Oct. 30, 2025 (GLOBE NEWSWIRE) -- Pixalate, the leading ad fraud protection, privacy, and compliance analytics platform, today released the Q3 2025 Connected TV (CTV) Malformed and Fraudulent Bundle IDs Risk Reports for the Amazon Fire TV, Roku, Apple TV, LG Smart TV, and Samsung Smart TV CTV apps.

The series of reports provides a detailed analysis of the global status of non-standard and malformed CTV Bundle IDs in the open programmatic advertising supply chain as of Q3 2025. A "malformed" Bundle ID refers to an app identifier used in the ad bid that is either uncorrelated or unmapped to any known app, according to Pixalate’s Bundle ID mapping technology. These "malformed" Bundle IDs can disrupt ad targeting and campaign measurement while paving the way for ad fraud.

Key Findings:

Roku: 18% of measured Bundle IDs were malformed, unidentified, and/or fraudulent (786 out of 4,252)

  • 59% of Bundle IDs across Roku traffic used actual App Store IDs, which is the recommended method for app identification according to the IAB Tech Lab

Amazon Fire TV: 31% of measured Bundle IDs were malformed, unidentified, and/or fraudulent (1,010 out of 3,252)

  • 58% of Bundle IDs across Amazon Fire TV traffic used actual App Store IDs, which is the recommended method for app identification according to the IAB Tech Lab

Apple TV: 61% of measured Bundle IDs were malformed, unidentified, and/or fraudulent (1,107 out of 1,817)

  • 31% of Bundle IDs across Apple TV traffic used actual App Store IDs, which is the recommended method for app identification according to the IAB Tech Lab

Samsung Smart TV: 60% of measured Bundle IDs were malformed, unidentified, and/or fraudulent (1,110 out of 1,858)

  • 23% of Bundle IDs across Samsung Smart TV traffic used actual App Store IDs, which is the recommended method for app identification according to the IAB Tech Lab

LG Smart TV: 86% of measured Bundle IDs were malformed, unidentified, and/or fraudulent (1,585 out of 1,856)

  • 9% of Bundle IDs across LG TV traffic used actual App Store IDs, which is the recommended method for app identification according to the IAB Tech Lab

Top Malformed, Unidentified &/or Fraudulent Bundle IDs (Q3 2025)
(by impression volume), as determined by Pixalate

Roku Bundle IDs

Rank (By Impression SOV) Malformed/Unidentified Bundle ID
1 eyeq
2 paramountstreaming
3 onefox
4 peacock_ax
5 scripps
6 wbd_fast
7 4932
8 news
9 711074
10 app.ott.ctv


LG Smart TV Bundle IDs

Rank (By Impression SOV) Malformed/Unidentified Bundle ID
1 eyeq
2 paramountstreaming
3 vizio.watchfree
4 com.foxsports.chromecast
5 onefox
6 peacock_ax
7 4932
8 com.yupptv.operatv
9 com.espn.plus
10 com.synapsetv.ukfreeview.greatromance


Samsung Smart TV Bundle IDs

Rank (By Impression SOV) Malformed/Unidentified Bundle ID
1 eyeq
2 paramountstreaming
3 lg_streaming
4 onefox
5 peacock_ax
6 b0066tuxu6
7 vizio.watchfree
8 scripps
9 news
10 com.mobilityware.crownsolitaire


Apple TV Bundle IDs

Rank (By Impression SOV) Malformed/Unidentified Bundle ID
1 peacock_ax
2 eyeq
3 paramountstreaming
4 scripps
5 lg_streaming
6 onefox
7 vizio.watchfree
8 711074
9 news
10 20006184


Amazon TV Bundle IDs

Rank (By Impression SOV) Malformed/Unidentified Bundle ID
1 eyeq
2 scripps
3 paramountstreaming
4 onefox
5 peacock_ax
6 g3201512006963
7 app2.tv
8 4932
9 com.twcabletv
10 com.mobdub.channel.kswo


For this report, Pixalate’s data science team analyzed over 1.8+ billion open programmatic CTV impressions in September 2025.

Download the complete reports:

About Pixalate

Pixalate is a global platform specializing in privacy compliance, ad fraud prevention, and digital ad supply chain data intelligence. Founded in 2012, Pixalate is trusted by regulators, data researchers, advertisers, publishers, ad tech platforms, and financial analysts across the Connected TV (CTV), mobile app, and website ecosystems. Pixalate is accredited by the MRC for the detection and filtration of Sophisticated Invalid Traffic (SIVT). pixalate.com

Disclaimer

The content of this press release, and the global Q3 2025 CTV Malformed Bundle IDs Risk Reports (the “Reports”), reflect Pixalate's opinions with respect to factors that Pixalate believes may be useful to the digital media industry. Any data shared is grounded in Pixalate’s proprietary technology and analytics, which Pixalate is continuously evaluating and updating. Any references to outside sources should not be construed as endorsements. Pixalate's opinions are just that, opinions, which means that they are neither facts nor guarantees. Pixalate is sharing this data not to impugn the standing or reputation of any entity, person or app, but, instead, to report findings and trends pertaining to programmatic advertising activity across in the time period studied. Per the Media Rating Council (MRC), “‘Invalid Traffic’ is defined generally as traffic that does not meet certain ad serving quality or completeness criteria, or otherwise does not represent legitimate ad traffic that should be included in measurement counts. Among the reasons why ad traffic may be deemed invalid is it is a result of non-human traffic (spiders, bots, etc.), or activity designed to produce fraudulent traffic.” Where the traffic characteristics are suggestive of deliberate intent to mislead, such IVT is often referred to as “ad fraud.” Also per the MRC, “'Fraud' is not intended to represent fraud as defined in various laws, statutes and ordinances or as conventionally used in U.S. Court or other legal proceedings, but rather a custom definition strictly for advertising measurement purposes.”

Nina Talcott
ntalcott@pixalate.com


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