The opinions expressed by Entrepreneur authors are their very own.
Virtually everyone with an online presence knows how essential it is to have a solid content strategy. But let me ask you a query: how much time do you spend on the keyword research process? Here’s one other one for you: How Valid Is Your Keyword Research Plan?
We all know Google’s algorithm updates. While we may not know exactly how they work, we do know that this search giant is strongly committed to offering useful information to its users. Why am I mentioning this? Because all this is related to the increase in semantic keyword evaluation.
For me, there is no higher strategy to save time and strengthen your keyword strategy than using artificial intelligence (AI) tools. So, without further ado, I’ll present my case below.
Understanding semantic keyword evaluation
Let’s turn back the search engine optimisation clock a few years ago. Back then, search engine optimisation tools were used to discover high search volume keywords. This was all well and good, but these keywords would then be shamelessly “stuffed” into the content repeatedly, which sometimes sounded illogical or even spammy.
This was based on the assumption that the more often a keyword appears in text, the higher Google understands its lexical meaning and ranks content on search engine results pages (SERPs).
Fast forward to today. As technology advances, we’re seeing an increase in the use of not only lexical keywords, but also semantic keywords as Google targets search intent and helpful content.
This is where semantic keyword evaluation comes into play. This is an essential strategy for improving content relevancy and targeting because it goes beyond traditional keyword matching and permits you to higher understand context and user intent. In plain English, which means as Google’s algorithms evolve to know the semantics of a search term, we SEOs must adapt to those changes as well.
Artificial intelligence and natural language processing
So how do you adapt? How can we improve our semantic keyword research? How are you able to speed up the process while creating high-quality results and research content? Personally, I’m a strong supporter of relying on artificial intelligence to assist us achieve efficiency.
Some AI technologies based on natural language processing (NLP) are perfect for semantic keyword evaluation. Why? Because through NLP and machine learning, computers learn to know and interpret human language.
The right AI tools might help interpret essential linguistic nuances that discover semantic relationships between words. This signifies that NLP can improve our semantic keyword evaluation at a fraction of the cost and in less time than it often takes to finish a thorough research process.
Benefits of semantic keyword evaluation using AI
Every search engine optimisation skilled, including myself, knows the value of thorough keyword research. It is the basis for creating high-quality content, optimizing it and exceeding your competitors with sophistication. This is why AI-powered semantic evaluation really takes center stage in our efforts.
In particular, a few key areas where some AI tools may be helpful include:
-
Improved content targeting accuracy
-
Understanding user search intent
-
Streamline your content optimization efforts
In turn, once you implement these elements, you possibly can begin to see improvements in your SERP rankings and enjoy more organic traffic. However, double success comes with more conversions and greater user engagement with your content.
Implementation strategies
Are you already convinced of the power of NLP-based semantic keyword evaluation? If so, now is the right time for me to share some key implementation strategies and practical suggestions on learn how to get began successfully.
-
Choose the right AI tool: First, you’ll want to select the right AI tool. This could seem obvious, but you’ll want to consider your corporation needs and budget. Look for tools that provide comprehensive keyword evaluation that takes into account search volume, user intent, and content gaps.
-
Identify your goal keywords: Take your most important keyword and enter it into the AI keyword tool. The results you must get are a list of related keywords. These should accompany your search volume, competition, and relevancy rating. It’s time to place on your pondering cap and go through the list. You need to decide on the most relevant, high-traffic keywords for your content while ensuring low to moderate competition.
-
Analyze user intentions: Your AI-powered tool also needs to provide insight into the user’s intent behind search terms. This information may be used to develop a content outline and content creation process. If you meet user needs through content, you possibly can enjoy higher online visibility and engagement.
-
Optimize your content: You’ve created a content outline and narrowed down the keywords to make use of in your article or piece of content, based on actual data from your AI tool. Now it is time to optimize. If you are creating a blog post, your most important keyword should appear in the post title, some headings and subheadings, and in the meta title and/or meta description. The content also needs to include basic keyword variations and semantic keywords. However, remember to jot down with a natural linguistic flow. Important note: avoid keyword stuffing as if you were attempting to avoid any disease.
-
Monitor, correct and improve: Your work doesn’t end when you hit the “Publish” button. This is where the real work begins. You need to make use of an AI tool to observe metrics like organic traffic, bounce rate, time on page, conversion rates, and more. With solid data at your fingertips, you possibly can easily make crucial adjustments and refine your content for optimal performance.
And if you continue to think it sounds too good to be true, consider the case of my very own blog, InCertain Blogging. In just six months, keyword growth went from a low of 232 to a whopping 3,894 keywords rating. All this with the help of AI tools reminiscent of HARPA AI, NeuronWriter, AgilityWriter and others.
Future trends
Finally, I would really like to share with you some of the expectations I have regarding semantic keyword evaluation using artificial intelligence.
First, voice search. I expect search engine optimisation experts will increasingly include conversational and long-tail keywords in their content, reflecting the increase in the use of smartphones and voice assistants.
Secondly, latent semantic indexing (LSI) keywords shall be a rising star in search engine optimisation because they assist search engines like google like Google higher index content and generate more accurate and relevant search results tailored to user queries.
In summary, AI tools can shape our approach to semantic keyword evaluation, speed up our processes and save priceless time and money while delivering great results for our readers and users.