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Since their inception, search engines have gone from basic search agents to sophisticated algorithms based on artificial intelligence (AI) and machine learning (ML). These innovative technologies affect the Search Engine Optimization (SEO) space from two completely opposite perspectives.
On the one hand, it has become much more challenging to promote websites and push them to the top of SERP due to new AI-based ranking algorithms able to perform a very in-depth scan beyond meta. On the other hand, as the overall quality of search results has improved significantly, it is more difficult now to manipulate them using different kludges and black hat practices (albeit still possible which I'll show you below).All in all, artificial intelligence has fundamentally changed the approach to SEO. Let's dive deep into how AI is used in search engine marketing and how tech-savvy marketers use it to better meet their goals and improve crucial performance indicators.1) , or weak AI.
It provides a narrow range of abilities. These systems can only be trained to perform specific tasks. Examples are Google's Rankbrain, Apple's Siri, or Amazon's Alexa.
2) , or strong AI.
It mirrors human capabilities, is versatile, capable of solving many problems, and learning from experience.3) , or hypothetical AI.
It's supposed to surpass the human intellectual ability.ANI is the only type of AI that has been successfully implemented by humans so far.
Supervised learning – algorithms try to model the relationships and dependencies between the target prediction output and the input functions so that we can predict the outputs for new data based on the relationships it has learned from previous datasets.
Unsupervised learning – the computer is trained with unlabelled data. The computer can teach you something new after it learns the patterns in the data. These algorithms are especially useful in cases where we don't know what to look for in the data.
Semi-supervised learning – in many practical situations, the cost of labeling is quite high, as it requires skilled human professionals. Thus, in the absence of labels, semi-guided algorithms are the best candidates for building a model. These methods take advantage of the idea that even if the membership of unlabelled data groups is unknown, the data carries important information about the group's parameters.
Reinforced learning – this method uses the observations collected during interaction with the environment to take actions that will maximize reward or minimize risk. A reinforcement learning algorithm (called an agent) continuously and iteratively learns from the environment. In the process, the agent learns from his experiences in the environment until it explores the full range of possible states.
That being said, AI bypasses the classical approach's error by allowing the system to identify patterns and learn implicit rules by analyzing thousands of examples (images, sound files, texts, etc.) according to certain concepts (as was the case with the cat example).Google representatives point out that this algorithm is the third important factor in modern search ranking, along with content quality and links.Well, the cherry on the cake was the algorithm released in 2019.BERT (Bidirectional Encoder Representations from Transformers) is also an NLP learning system based on a neural network. Unlike other models, BERT is designed for a deep understanding of natural speech.In other words, BERT should allow the bots to understand what the words in the sentence mean, given every detail of the context. Google uses BERT to better understand user queries and provide them with genuinely relevant results.
GPT-2
GPT-2 is a large transformer-based language model with 1.5 billion parameters, trained on a dataset of 8 million web pages with a simple objective of predicting the next word to match the context.Image source: GitHub
They say that the texts written by this transformer are almost no different from the texts written by a person. I've decided to double-check it.As a content marketer, one of my goals is to increase my employer's brand awareness and thought leadership and generate word of mouth through guest and ghost publications in top-tier and fringe media. For this objective, I've found a great UK-based media outlet to submit my guest publication.
However, every submitted article is read by real human editors. If they find no value in the content, they won't publish it.I've used this transformer to create an article and submit it to the editor for approval. To my surprise, the editors accepted it and didn't understand that a bot wrote the text.In general, you can safely apply the GPT-2 model to create articles and comments in different languages.GPT-2 generated text example
How to work with GPT-2 model
Go to that hosts the working GPT-2 model. Find the source of the text you need. Copy a small (two to three sentences) piece of text, paste it into the form and click the "Complete Text" button. GPT-2 will create three to five paragraphs of text. If the result created with the help of artificial intelligence did not suit you, click on the "Complete Text" button again.If the generated text meets your expectations, copy it. Then paste the last paragraph, written by GPT-2, into the transformer form and click the "Complete Text" button again. GPT-2 will continue writing your article.GPT-3
OpenAI has recently released a third-generation open source language prediction model , which allows computers to generate random sentences of approximately the same length and grammatical structure as the sample ones.In his early experiments with GPT-3, a Github user found that the predicted GPT-3 proposals, when they were posted on the bitcointalk.org forum, attracted a lot of positive attention from fellow forum participants, including suggestions that the system must be smart (and / or sarcastic ) and that he found subtle patterns in their messages. He believes similar results can be obtained by republishing the GPT-3 results on other message boards, blogs, and social networks.
Every day in May to bitcointalk.org one interesting technical post generated entirely by GPT-3 model. While users interacted with his posts, GPT-3 model created replies and even predicted to the next comments.
According to Araoz, whenever he posts to the forum as himself, people frequently mention that they think he must be a “bot” to be able to post so quickly, be so accurate, and / or say the same thing as someone else.That experiment made him believe that GPT-3 was one of the major technological advancements he's seen so far.How to use GPT-3 in SEO
If content marketing generates 50% or more of your business results, it might be worth expanding your skill set to become a more AI-savvy marketer.You can use GPT-3 models for the following tasks:Image source: dialogtech.com
If you want your brand to stay competitive or if you need to improve the performance of your campaigns, you need to keep up with this trend and optimize your content for voice search. To satisfy the algorithms and get high rankings, you should use the same tools and tactics used by search engines. This is why tools like or can be very helpful when it comes to making content more accessible to search engines and voice search queries.There are a great many tasks where you can apply AI; it all depends on what you want to do and how much data you need to process regularly. There is always a question of profitability.Since AI, in principle, has not yet been created, we can only work with weak or narrowly targeted "analogs", such as gradient boosting over decision trees. There are a lot of examples of using neural networks, namely:Ambiguation – using AI bots to deliberately flood the Internet with the wrong addresses or phone numbers for a competitor's location;
Google Bombing (a.k.a. Googlewashing) – the practice of causing a website to rank highly on SERP for irrelevant, unrelated, or off-topic search terms by heavy linking;
302 hijacking - using AI bots to configure a temporary redirect from one site to another, which allows the redirect page to start ranking for the landing page's keywords.
For example, after the March nerve agent attack in the UK and the April chemical weapons attack in Syria, articles by RT and Sputnik, the Russian government's propaganda agencies, appeared on the first page of Google searches. Likewise, YouTube (owned by Google) has an algorithm that prioritizes the time users spend watching content as a key metric for determining what content appears first in search results.This algorithmic preference leads to false, extremist, and unreliable information at the top, which means that this content is viewed more often and perceived by users as more reliable."The revenue from the SEO manipulation industry is estimated at billions of dollars."
1) Use GPT-2 and GPT-3 models to create high-quality search engine optimized content (both short-form for social media and meta and long-form and evergreen for long-term strategic results).
2) Use Google's to optimize images, detect emotion, understand the text, and more.
3) Pay attention to the quality of each page's content, the logic of your storytelling, and the context in which words are used. At the moment, checking for compliance with the context is the most difficult and time-consuming task because there are very few tools that use the national word corpora for this.
One of the best yet most expensive solutions for this is . It uses the word corpora derived from Wikipedia texts. By the way, Google BERT was also trained on Wikipedia texts.4) Move from optimizing pages for keywords (including in-text search queries and their density) to optimizing the essence of your content, namely:
Are you a startup working at the intersection of AI and marketing? Feel free to reach out to me on to pitch your story. I'll be happy to feature it in my next article.