Test your text against 4 different AI content detection models at once for free.
If you are working with SEO, you should not be focused on whether Google can detect your text as AI content, but on whether it's high-quality and helpful.
Is your score off? Currently, it only supports English. Discover the different methods used for detecting AI content and why it keeps getting harder to predict accurately.
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Our FAQ covers some of the most commonly asked questions about our AI Detector tool.
An AI Content Detector is an artificial intelligence-based tool designed to analyze, identify, and classify various types of content within digital media. This can include text, images, audio, and video files.
The most commonly used AI content detectors however, is used on text.
AI Content Detectors use machine learning algorithms and natural language processing techniques to analyze, understand, and categorize content.
They can recognize patterns, detect specific elements, and classify content based on predefined categories or custom criteria.
The accuracy of AI Content Detectors depends on the quality of their algorithms and the training data used.
In general, they can be highly accurate, but they may still produce false positives or negatives. Regular updates and fine-tuning can help improve accuracy over time.
Additionally, combining several detection algorithms has proven to increase accuracy.
"Prediction" refers to the process of using machine learning algorithms to anticipate or estimate the classification or categorization of a particular piece of content. This process allows the AI Content Detector to assign content to specific categories, such as spam, offensive material, or specific themes or subjects, with a certain level of confidence or probability.
“Entropy” is a measure of uncertainty or randomness associated with the classification or categorization of content. Higher entropy indicates greater uncertainty in the AI's predictions, while lower entropy suggests more confidence in the classifications. Entropy can be used to assess the performance of AI algorithms, helping developers fine-tune their models for better accuracy and reliability in content detection.
“Correlation” refers to the degree of association or relationship between different features or variables in the content analysis process. High correlation between variables can suggest that they are closely related, while low correlation indicates weak or no relationship. Understanding correlations helps AI developers improve the accuracy and efficiency of their content detection models by identifying significant relationships between input features and output predictions.
“Perplexity” is a metric used to evaluate the performance of language models, which are a key component in many content detection systems. Perplexity measures how well a language model predicts a given sequence of words or characters in a text. By optimizing perplexity, developers can improve the accuracy and effectiveness of AI Content Detectors, particularly in tasks such as text classification, sentiment analysis, and content moderation.
AI Content Detectors are used in various industries and applications, such as content moderation, sentiment analysis, spam filtering, plagiarism detection, copyright infringement detection, and automated content tagging. We have written more about who might be interested in trying to identify AI content.
AI Content Detectors can in theory deliver a result in any language supported by the underlying AI. However, the accuracy will vary depending on the data it has been trained on.
Our AI detector mainly works with English.
Detectors rely on natural language processing techniques and is trained on actual content published online. The more data the more accurate the detector, and there are more data available in English than most other languages. Therefore the results are usually more accurate in English than any other language.
This also means, many detectors limit the supported languages to ensure a more reliable analysis.
There are no guaranteed ways to avoid detection. However, in general, you want text with less predictable language.
To achieve this, you can do the following:
Advanced language: Instruct the AI to use more advanced language generation techniques, such as those that take context, tone, and style into account. This will to some degree, mask the fact that it was created by an AI making it more difficult to detect.
Use a tool with an advanced AI engine: The language models are improving, and the difference between GPT-3.5 and GPT-4 is staggering. Ensuring you use the best AI to generate your content will make your content more natural and, by extension, less likely to be flagged as AI-generated.
Mixing human writing with AI: In our experience, this is the best way to throw off detection. Rewrite some sentences and add a few paragraphs yourself. It significantly affects the detectors’ ability to recognize generated content.
We have written more about how to avoid AI detectors in this article.