HowDoes ItWork ?
What Is Keyword Clustering?
Keyword clustering involves grouping keywords that share the same search intent. These keywords should then be targeted together on a single page.
Step 1 - I'm importing my keyword list
Step 2 - I'm selecting keywords to cluster
You can filter your keywords by search volume, inclusion, and exclusion.
Step 3 - I'm creating my keyword cluster
Grouping keywords by search intent
We will retrieve the Google SERP for each keyword and group together keywords with similar SERPs.
Displaying your domain’s rankings
We display your domain's ranking for each keyword in the cluster. You can easily identify cannibalization issues and gaps in semantic optimization.
Grouping keywords by topical cluster
We group your keywords by theme to help you more easily build your website architecture.
BOOST YOUR SEO WRITING PRODUCTIVITY
Appear on the 1st page of Google
It’s like having access to a team of copywriting experts writing powerful copy for you in 1-click.
Frequently Asked Questions about Keyword Clustering
What is the purpose of Keyword Clustering?
Keyword Clustering is used to group keywords by search intent. For example, "Google Ads price" and "Google Ads cost" share the same search intent.
Keywords within the same cluster should be grouped on the same page to avoid cannibalization.
How do you cluster keywords?
There are several methods for clustering keywords. In our experience, the most effective way is to use Google search results to cluster keywords. Two keywords with similar SERPs will be grouped together.
How many keywords can I cluster?
There is no limit to the number of keywords you can cluster together.
How Can a Keyword Clustering Tool Streamline My SEO Efforts?
A keyword clustering tool is a game-changer for streamlining your SEO efforts, particularly when it comes to managing and utilizing the vast lists of keywords generated by keyword research tools. Here’s how it can transform your SEO workflow.
Keyword research tools are excellent at uncovering a plethora of potential keywords, but often, 50 to 75% of these keywords are duplicates in terms of search intent. This means that a significant portion of your time is spent filtering out these duplicates, which can be both tedious and inefficient. A keyword clustering tool automates this process, allowing you to quickly transform a list of raw keywords into a structured list of SEO content opportunities without the risk of keyword cannibalization.
By grouping similar keywords based on their search intent and semantic similarity, these tools help you identify which keywords can be targeted together on a single page. For instance, instead of creating separate pages for "google ads cost" and "google ads price", you can group these keywords into a single cluster and create one comprehensive page that addresses all these topics.
Keyword clustering tools save you a considerable amount of time and effort in content creation. By identifying and grouping related keywords, you can focus on creating fewer, more substantial pieces of content that cover entire topics rather than thin pages for individual keywords. This approach not only enhances the quality of your content but also aligns with search engines' preference for comprehensive and authoritative content.
One of the most significant benefits of using a keyword clustering tool is the reduction in keyword cannibalization. When multiple pages on your website target the same or very similar keywords, it can confuse search engines and dilute the ranking potential of each page.
By clustering keywords, you ensure that each page on your website has a unique set of targeted keywords, thereby avoiding cannibalization and maximizing the SEO impact of your content.
What Are The Different Types of Keyword Grouping?
Semantic Similarity Grouping
Semantic similarity grouping clusters keywords by their meanings and contexts, employing natural language processing (NLP) techniques to assess the semantic relationships between different keywords. For example, "organic cleaning products," "eco-friendly cleaning solutions," and "natural household cleaners" would be grouped together due to their shared meanings. This method utilizes models to transform input texts into vector embeddings, capturing essential semantic information.
These vector embeddings are compared to gauge the similarity among keywords. Although semantic similarity grouping is effective in identifying related keywords, it may not perfectly capture the search intent of users.
SERP Grouping
SERP (Search Engine Results Page) grouping offers a more precise and advanced technique for keyword clustering. It analyzes the search results for a group of keywords to detect patterns and overlaps, grouping keywords based on the similarity of the URLs ranking for them. If several keywords lead to the same URLs in their search results, it suggests a close relationship in search intent among those keywords.
This method is highly accurate as it mirrors actual search behaviors and the algorithms of search engines like Google. Utilizing real-time SERP data ensures that keyword clusters are in line with search engines' understanding of keyword relationships.
By considering the ranking pages and their content, SERP grouping provides a more detailed insight into the interconnectedness of keywords. This approach is invaluable for crafting targeted and relevant content that appeals to both users and search engines.