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Not today, fraudster: smarter survey design starts here

Not today, fraudster: 3 core principles to make smarter survey design to prevent frauds

Incentivised surveys attract more than just honest respondents – they also attract fraudsters and inattentive users trying to game the system. To separate genuine respondents from fraudsters, we need to make it difficult for dishonest respondents to slip through (without punishing genuine participants along the way). 

Protecting our surveys through in-survey checks is an essential part of a holistic quality assurance system. Surveys without quality checks are essentially fraud magnets, as they make it extremely easy for dishonest respondents to make it through and collect their incentive.  
 
In a random selection of 61 surveys submitted to Toluna for scripting in August 2025, we found that 64% of surveys did not have any quality checks included in their questionnaire design. This highlights the need for further education on fraud prevention in the industry. 

Let’s look at three core principles to designing surveys that are both fraud-resistant and human-friendly.

1. Make it difficult for fraudsters, easy for real respondents 

Make the survey questions difficult for fraudsters but easy for real respndents

The most effective way to fraud-proof a survey is to weave detection into the design, not bolt it on after the fact. When quality checks are subtle and embedded, they don’t interrupt the experience for real participants, but they trip up fraudsters quickly. 

2. Basic quality checks have their place, but smart ones are the future 

Yes, speeding flags, straight-lining, and attention check questions still help. But they likely catch more real respondents – tired ones, distracted ones, those who are real people. Fraudsters? They know these checks inside out and have adapted their algorithms and tools to circumvent them. 

Continuously evolve the survey defences with smarter techniques like logic checks, behavioural signals, and aggregated data checks to prevent fraudsters

3. Common pitfalls to avoid 

•	Excessive checks or poorly placed ones can lead to biased results. Balance is essential.

With all the quality checks, data points, and talk about fraud, it’s easy to start seeing patterns or issues that may not be there. Even well-meaning quality control can backfire. Here’s what to watch out for: