
Recherche avancée
Autres articles (55)
-
Les formats acceptés
28 janvier 2010, par kent1Les commandes suivantes permettent d’avoir des informations sur les formats et codecs gérés par l’installation local de ffmpeg :
ffmpeg -codecs ffmpeg -formats
Les format videos acceptés en entrée
Cette liste est non exhaustive, elle met en exergue les principaux formats utilisés : h264 : H.264 / AVC / MPEG-4 AVC / MPEG-4 part 10 m4v : raw MPEG-4 video format flv : Flash Video (FLV) / Sorenson Spark / Sorenson H.263 Theora wmv :
Les formats vidéos de sortie possibles
Dans un premier temps on (...) -
Ajouter notes et légendes aux images
7 février 2011, par kent1Pour pouvoir ajouter notes et légendes aux images, la première étape est d’installer le plugin "Légendes".
Une fois le plugin activé, vous pouvez le configurer dans l’espace de configuration afin de modifier les droits de création / modification et de suppression des notes. Par défaut seuls les administrateurs du site peuvent ajouter des notes aux images.
Modification lors de l’ajout d’un média
Lors de l’ajout d’un média de type "image" un nouveau bouton apparait au dessus de la prévisualisation (...) -
Prérequis à l’installation
31 janvier 2010, par kent1Préambule
Cet article n’a pas pour but de détailler les installations de ces logiciels mais plutôt de donner des informations sur leur configuration spécifique.
Avant toute chose SPIPMotion tout comme MediaSPIP est fait pour tourner sur des distributions Linux de type Debian ou dérivées (Ubuntu...). Les documentations de ce site se réfèrent donc à ces distributions. Il est également possible de l’utiliser sur d’autres distributions Linux mais aucune garantie de bon fonctionnement n’est possible.
Il (...)
Sur d’autres sites (10041)
-
Multivariate Testing vs A/B Testing (Quick-Start Guide)
7 mars 2024, par ErinTraditional advertising (think Mad Men) was all about slogans, taglines and coming up with a one-liner that was meant to change the world.
But that type of advertising was extremely challenging to test, so it was hard to know if it worked. Most of the time, nobody knew if they were being effective with their advertising.
Enter modern marketing : the world of data-driven advertising.
Thanks to the internet and web analytics tools like Matomo, you can quickly test almost anything and improve your site.
The question is, should you do multivariate testing or A/B testing ?
While both have their advantages, each has a specific use case.
In this guide, we’ll break down the differences between multivariate and A/B testing, offer some pros and cons of each and show you some examples so you can decide which one is best for you.
What is A/B testing ?
A/B testing, or split testing, is testing an individual element in a medium against another version of the same element to see which produces better results.
A/B tests are conducted by creating two different versions of a digital landmark : a website, landing page, email, or advertisement.
The goal ? Figure out which version performs better.
Let’s say, for example, you want to drive more sales on your core product page.
You test two call-to-action buttons : “Buy Now” and “Add to Cart.”
After running the test for two weeks, you see that “Buy Now” produced 1.2% conversions while “Add to Cart” produced 7.6%.
In this scenario, you’ve found your winner : version B, “Add to Cart.”
By conducting A/B tests regularly, you can optimise your site, increase engagement and convert more visitors into customers.
Keep in mind that A/B testing isn’t perfect ; it doesn’t always produce a win.
According to Noah Kagan, founder of AppSumo, only 1 out of 8 A/B tests his company conducts produces significant change.
Advantages of A/B testing
A/B testing is great when you need to get an accurate result fast on a specific element of your marketing efforts.
Whether it’s a landing page or product page, you can get quick results without needing a lot of traffic.
A/B testing is one of the most widely accepted and used testing methods for marketers and business owners.
When you limit the number of tracked variables used in a test, you can quickly deliver reliable data, allowing you to iterate and pivot quickly if necessary.
This is a great way to test your marketing methods, especially if you’re a newer business or you don’t have substantial traffic yet.
Splitting up your traffic into a few segments (like with multivariate testing) will be very challenging to gain accurate results if you have lower daily traffic.
One final advantage of A/B testing is that it’s a relatively easy way to introduce testing and optimising to a team, decision-maker, or stakeholder since it’s easy to implement. You can quickly demonstrate the value with a simple change and tangible evidence.
Disadvantages of A/B testing
So, what are the downsides to A/B testing ?
Although A/B testing can get you quick results on small changes, it has limitations.
A/B testing is all about measuring one element against another.
This means you’re immediately limited in how many elements you can test. If you have to test out different variables, then A/B testing isn’t your best option since you’ll have to run test after test to get your result.
If you need specific information on how different combinations of elements interact with one another on a web page, then multivariate is your best option.
What is multivariate testing ?
If you want to take your testing to the next level, you’ll want to try multivariate testing.
Multivariate testing relies on the same foundational mechanism of A/B testing, but instead of matching up two elements against one another, it compares a higher number of variables at once.
Multiple + variations = multivariate.
Multivariate testing looks at how combinations of elements and variables interact.
Like A/B testing, traffic to a page is split between different web page versions. Multivariate testing aims to measure each version’s effectiveness against the other versions.
Ultimately, it’s about finding the winning combination.
When to use multivariate testing
The quick answer on when to use multivariate testing is if you have enough traffic.
Just how much traffic, though ?
While there’s no set number, you should aim to have 10,000 visitors per month or more, to ensure that each variant receives enough traffic to produce meaningful results within a reasonable time frame.
Once you meet the traffic requirement, let’s talk about use cases.
Let’s say you want to introduce a new email signup.
But you want to create it from scratch and aren’t sure what will make your audience take action.
So, you create a page with a signup form, a header, and an image.
To run a multivariate test, you create two lengths of signup forms, four headlines, and two images.
Next, you would create a test to split traffic between these sixteen combinations.
Advantages of multivariate testing
If you have enough traffic, multivariate testing can be an incredible way to speed up your A/B testing by testing dozens of combinations of your web page.
This is handy when creating a new landing page and you want to determine if specific parts of your design are winners — which you can then use in future campaigns.
Disadvantages of multivariate testing
The main disadvantage of multivariate testing is that you need a lot of traffic to get started.
If you try to do a multivariate analysis but you’re not getting much traffic, your results won’t be accurate (and it will take a long time to see accurate data).
Additionally, multivariate tests are more complicated. They’re best suited for advanced marketers since more moving parts are at play.
Key differences between multivariate and A/B testing
Now that we’ve covered what A/B and multivariate tests are, let’s look at some key differences to help clarify which is best for you.
1. Variation of combinations
The major difference between A/B and multivariate testing is the number of combinations involved.
With A/B testing, you only look at one element (no combinations). You simply take one part of your page (i.e., your headline copy) and make two versions.
With multivariate testing, you’re looking at combinations of different elements (i.e., headline copy, form length, images).
2. Number of pages to test
The next difference lies in how many pages you will test.
With an A/B test, you are splitting traffic on your website to two different pages : A and B.
However, with multivariate testing, you will likely have 4-16 different test pages.
This is because dozens of combinations can be created when you start testing a handful of elements at once.
For example, if you want to test two headlines, two form buttons and two images on a signup form, then you have several combinations :
- Headline A, Button A, Image A
- Headline A, Button A, Image B
- Headline A, Button B, Image A
- Headline A, Button B, Image B
- Headline B, Button A, Image A
- Headline B, Button A, Image B
- Headline B, Button B, Image A
- Headline B, Button B, Image B
In this scenario, you must create eight pages to send traffic to.
3. Traffic requirements
The next major difference between the two testing types is the traffic requirements.
With A/B testing, you don’t need much traffic at all.
Since you’re only testing two pages, you can split your traffic in half between the two types.
However, if you plan on implementing a multivariate test, you will likely be splitting your traffic at least four or more ways.
This means you need to have significantly more traffic coming in to get accurate data from your test. If you try to do this when your traffic is too low, you won’t have a large enough sample size.
4. Time requirements
Next up, just like traffic, there’s also a time requirement.
A/B testing only tests two versions of a page against each other (while testing a single element). This means you’ll get accurate results faster than a multivariate test — usually within days.
However, for a multivariate test, you might need to wait weeks. This is because you’re splitting your traffic by 4, 8, 12, or more web page variations. This could take months since you need a large enough sample size for accuracy.
5. Big vs. small changes
Another difference between A/B testing and multivariate testing is the magnitude of changes.
With an A/B test, you’re looking at one element of a page, which means changing that element to the winning version isn’t a major overhaul of your design.
But, with multivariate testing, you may find that the winning combination is drastically different than your control page, which could lead to a significant design change.
6. Accuracy of results
A/B tests are easier to decipher than multivariate testing since you only look at two versions of a single element on a page.
You have a clear winner if one headline yields a 5% conversion rate and another yields a 1.2% conversion rate.
But multivariate testing looks at so many combinations of a page that it can be a bit trickier to decipher what’s moving the needle.
Pros and cons : Multivariate vs. A/B testing
Before picking your testing method of choice, let’s look at some quick pros and cons.
A/B testing pros and cons
Here are the pros and cons of A/B testing :
Pros
- Get results quickly
- Results are easier to interpret
- Lower traffic requirement
- Easy to get started
Cons
- You need to be hyper-focused on the right testing element
- Requires performing test after test to optimise a web page
Multivariate testing pros and cons
Here are the pros and cons of multivariate testing :
Pros
- Handy when redesigning an entire web page
- You can test multiple variables at once
- Significant results (since traffic is higher)
- Gather multiple data insights at once
Cons
- Requires substantial traffic
- Harder to accurately decipher results
- Not as easy to get started (more advanced)
Use Matomo to start testing and improving your site
You need to optimise your website if you want to get more leads, land more conversions and grow your business.
A/B testing and multivariate testing are proven testing methods you can lean on to improve your website and create a better user experience.
You may prefer one testing method now over the other, and that’s okay.
The main thing is you’re starting to test. The best marketers and analysts in the world find what works through testing and double down on their winning tactics.
If you want to start improving your website with testing today, get started with Matomo for free.
With Matomo, you can conduct A/B tests and multivariate tests easily, accurately, and ethically. Unlike other web analytics tools, Matomo prioritises privacy, providing
100% accurate data without sampling, and eliminates the need for cookie consent
banners (except in the UK and Germany).Try Matomo free for 21-days. No credit card required.
Try Matomo for Free
21 day free trial. No credit card required.
-
How to Choose the Optimal Multi-Touch Attribution Model for Your Organisation
13 mars 2023, par Erin — Analytics TipsIf you struggle to connect the dots on your customer journeys, you are researching the correct solution.
Multi-channel attribution models allow you to better understand the users’ paths to conversion and identify key channels and marketing assets that assist them.
That said, each attribution model has inherent limitations, which make the selection process even harder.
This guide explains how to choose the optimal multi-touch attribution model. We cover the pros and cons of popular attribution models, main evaluation criteria and how-to instructions for model implementation.
Pros and Cons of Different Attribution Models
First Interaction
First Interaction attribution model (also known as first touch) assigns full credit to the conversion to the first channel, which brought in a lead. However, it doesn’t report other interactions the visitor had before converting.
Marketers, who are primarily focused on demand generation and user acquisition, find the first touch attribution model useful to evaluate and optimise top-of-the-funnel (ToFU).
Pros
- Reflects the start of the customer journey
- Shows channels that bring in the best-qualified leads
- Helps track brand awareness campaigns
Cons
- Ignores the impact of later interactions at the middle and bottom of the funnel
- Doesn’t provide a full picture of users’ decision-making process
Last Interaction
Last Interaction attribution model (also known as last touch) shifts the entire credit allocation to the last channel before conversion. But it doesn’t account for the contribution of all other channels.
If your focus is conversion optimization, the last-touch model helps you determine which channels, assets or campaigns seal the deal for the prospect.
Pros
- Reports bottom-of-the-funnel events
- Requires minimal data and configurations
- Helps estimate cost-per-lead or cost-per-acquisition
Cons
- No visibility into assisted conversions and prior visitor interactions
- Overemphasise the importance of the last channel (which can often be direct traffic)
Last Non-Direct Interaction
Last Non-Direct attribution excludes direct traffic from the calculation and assigns the full conversion credit to the preceding channel. For example, a paid ad will receive 100% of credit for conversion if a visitor goes directly to your website to buy a product.
Last Non-Direct attribution provides greater clarity into the bottom-of-the-funnel (BoFU). events. Yet, it still under-reports the role other channels played in conversion.
Pros
- Improved channel visibility, compared to Last-Touch
- Avoids over-valuing direct visits
- Reports on lead-generation efforts
Cons
- Doesn’t work for account-based marketing (ABM)
- Devalues the quality over quantity of leads
Linear Model
Linear attribution model assigns equal credit for a conversion to all tracked touchpoints, regardless of their impact on the visitor’s decision to convert.
It helps you understand the full conversion path. But this model doesn’t distinguish between the importance of lead generation activities versus nurturing touches.
Pros
- Focuses on all touch points associated with a conversion
- Reflects more steps in the customer journey
- Helps analyse longer sales cycles
Cons
- Doesn’t accurately reflect the varying roles of each touchpoint
- Can dilute the credit if too many touchpoints are involved
Time Decay Model
Time decay models assumes that the closer a touchpoint is to the conversion, the greater its influence. Pre-conversion touchpoints get the highest credit, while the first ones are ranked lower (5%-5%-10%-15%-25%-30%).
This model better reflects real-life customer journeys. However, it devalues the impact of brand awareness and demand-generation campaigns.
Pros
- Helps track longer sales cycles and reports on each touchpoint involved
- Allows customising the half-life of decay to improve reporting
- Promotes conversion optimization at BoFu stages
Cons
- Can prompt marketers to curtail ToFU spending, which would translate to fewer qualified leads at lower stages
- Doesn’t reflect highly-influential events at earlier stages (e.g., a product demo request or free account registration, which didn’t immediately lead to conversion)
Position-Based Model
Position-Based attribution model (also known as the U-shaped model) allocates the biggest credit to the first and the last interaction (40% each). Then distributes the remaining 20% across other touches.
For many marketers, that’s the preferred multi-touch attribution model as it allows optimising both ToFU and BoFU channels.
Pros
- Helps establish the main channels for lead generation and conversion
- Adds extra layers of visibility, compared to first- and last-touch attribution models
- Promotes budget allocation toward the most strategic touchpoints
Cons
- Diminishes the importance of lead nurturing activities as more credit gets assigned to demand-gen and conversion-generation channels
- Limited flexibility since it always assigns a fixed amount of credit to the first and last touchpoints, and the remaining credit is divided evenly among the other touchpoints
How to Choose the Right Multi-Touch Attribution Model For Your Business
If you’re deciding which attribution model is best for your business, prepare for a heated discussion. Each one has its trade-offs as it emphasises or devalues the role of different channels and marketing activities.
To reach a consensus, the best strategy is to evaluate each model against three criteria : Your marketing objectives, sales cycle length and data availability.
Marketing Objectives
Businesses generate revenue in many ways : Through direct sales, subscriptions, referral fees, licensing agreements, one-off or retainer services. Or any combination of these activities.
In each case, your marketing strategy will look different. For example, SaaS and direct-to-consumer (DTC) eCommerce brands have to maximise both demand generation and conversion rates. In contrast, a B2B cybersecurity consulting firm is more interested in attracting qualified leads (as opposed to any type of traffic) and progressively nurturing them towards a big-ticket purchase.
When selecting a multi-touch attribution model, prioritise your objectives first. Create a simple scoreboard, where your team ranks various channels and campaign types you rely on to close sales.
Alternatively, you can survey your customers to learn how they first heard about your company and what eventually triggered their conversion. Having data from both sides can help you cross-validate your assumptions and eliminate some biases.
Then consider which model would best reflect the role and importance of different channels in your sales cycle. Speaking of which….
Sales Cycle Length
As shoppers, we spend less time deciding on a new toothpaste brand versus contemplating a new IT system purchase. Factors like industry, business model (B2C, DTC, B2B, B2BC), and deal size determine the average cycle length in your industry.
Statistically, low-ticket B2C sales can happen within just several interactions. The average B2B decision-making process can have over 15 steps, spread over several months.
That’s why not all multi-touch attribution models work equally well for each business. Time-decay suits better B2B companies, while B2C usually go for position-based or linear attribution.
Data Availability
Businesses struggle with multi-touch attribution model implementation due to incomplete analytics data.
Our web analytics tool captures more data than Google Analytics. That’s because we rely on a privacy-focused tracking mechanism, which allows you to collect analytics without showing a cookie consent banner in markets outside of Germany and the UK.
Cookie consent banners are mandatory with Google Analytics. Yet, almost 40% of global consumers reject it. This results in gaps in your analytics and subsequent inconsistencies in multi-touch attribution reports. With Matomo, you can compliantly collect more data for accurate reporting.
Some companies also struggle to connect collected insights to individual shoppers. With Matomo, you can cross-attribute users across browning sessions, using our visitors’ tracking feature.
When you already know a user’s identifier (e.g., full name or email address), you can track their on-site behaviours over time to better understand how they interact with your content and complete their purchases. Quick disclaimer, though, visitors’ tracking may not be considered compliant with certain data privacy laws. Please consult with a local authority if you have doubts.
How to Implement Multi-Touch Attribution
Multi-touch attribution modelling implementation is like a “seek and find” game. You have to identify all significant touchpoints in your customers’ journeys. And sometimes also brainstorm new ways to uncover the missing parts. Then figure out the best way to track users’ actions at those stages (aka do conversion and events tracking).
Here’s a step-by-step walkthrough to help you get started.
Select a Multi-Touch Attribution Tool
The global marketing attribution software is worth $3.1 billion. Meaning there are plenty of tools, differing in terms of accuracy, sophistication and price.
To make the right call prioritise five factors :
- Available models : Look for a solution that offers multiple options and allows you to experiment with different modelling techniques or develop custom models.
- Implementation complexity : Some providers offer advanced data modelling tools for creating custom multi-touch attribution models, but offer few out-of-the-box modelling options.
- Accuracy : Check if the shortlisted tool collects the type of data you need. Prioritise providers who are less dependent on third-party cookies and allow you to identify repeat users.
- Your marketing stack : Some marketing attribution tools come with useful add-ons such as tag manager, heatmaps, form analytics, user session recordings and A/B testing tools. This means you can collect more data for multi-channel modelling with them instead of investing in extra software.
- Compliance : Ensure that the selected multi-attribution analytics software wouldn’t put you at risk of GDPR non-compliance when it comes to user privacy and consent to tracking/analysis.
Finally, evaluate the adoption costs. Free multi-channel analytics tools come with data quality and consistency trade-offs. Premium attribution tools may have “hidden” licensing costs and bill you for extra data integrations.
Look for a tool that offers a good price-to-value ratio (i.e., one that offers extra perks for a transparent price).
Set Up Proper Data Collection
Multi-touch attribution requires ample user data. To collect the right type of insights you need to set up :
- Website analytics : Ensure that you have all tracking codes installed (and working correctly !) to capture pageviews, on-site actions, referral sources and other data points around what users do on page.
- Tags : Add tracking parameters to monitor different referral channels (e.g., “facebook”), campaign types (e.g., ”final-sale”), and creative assets (e.g., “banner-1”). Tags help you get a clearer picture of different touchpoints.
- Integrations : To better identify on-site users and track their actions, you can also populate your attribution tool with data from your other tools – CRM system, A/B testing app, etc.
Finally, think about the ideal lookback window — a bounded time frame you’ll use to calculate conversions. For example, Matomo has a default windows of 7, 30 or 90 days. But you can configure a custom period to better reflect your average sales cycle. For instance, if you’re selling makeup, a shorter window could yield better results. But if you’re selling CRM software for the manufacturing industry, consider extending it.
Configure Goals and Events
Goals indicate your main marketing objectives — more traffic, conversions and sales. In web analytics tools, you can measure these by tracking specific user behaviours.
For example : If your goal is lead generation, you can track :
- Newsletter sign ups
- Product demo requests
- Gated content downloads
- Free trial account registration
- Contact form submission
- On-site call bookings
In each case, you can set up a unique tag to monitor these types of requests. Then analyse conversion rates — the percentage of users who have successfully completed the action.
To collect sufficient data for multi-channel attribution modelling, set up Goal Tracking for different types of touchpoints (MoFU & BoFU) and asset types (contact forms, downloadable assets, etc).
Your next task is to figure out how users interact with different on-site assets. That’s when Event Tracking comes in handy.
Event Tracking reports notify you about specific actions users take on your website. With Matomo Event Tracking, you can monitor where people click on your website, on which pages they click newsletter subscription links, or when they try to interact with static content elements (e.g., a non-clickable banner).
Using in-depth user behavioural reports, you can better understand which assets play a key role in the average customer journey. Using this data, you can localise “leaks” in your sales funnel and fix them to increase conversion rates.
Test and Validated the Selected Model
A common challenge of multi-channel attribution modelling is determining the correct correlation and causality between exposure to touchpoints and purchases.
For example, a user who bought a discounted product from a Facebook ad would act differently than someone who purchased a full-priced product via a newsletter link. Their rate of pre- and post-sales exposure will also differ a lot — and your attribution model may not always accurately capture that.
That’s why you have to continuously test and tweak the selected model type. The best approach for that is lift analysis.
Lift analysis means comparing how your key metrics (e.g., revenue or conversion rates) change among users who were exposed to a certain campaign versus a control group.
In the case of multi-touch attribution modelling, you have to monitor how your metrics change after you’ve acted on the model recommendations (e.g., invested more in a well-performing referral channel or tried a new brand awareness Twitter ad). Compare the before and after ROI. If you see a positive dynamic, your model works great.
The downside of this approach is that you have to invest a lot upfront. But if your goal is to create a trustworthy attribution model, the best way to validate is to act on its suggestions and then test them against past results.
Conclusion
A multi-touch attribution model helps you measure the impact of different channels, campaign types, and marketing assets on metrics that matter — conversion rate, sales volumes and ROI.
Using this data, you can invest budgets into the best-performing channels and confidently experiment with new campaign types.
As a Matomo user, you also get to do so without breaching customers’ privacy or compromising on analytics accuracy.
Start using accurate multi-channel attribution in Matomo. Get your free 21-day trial now. No credit card required.
-
How to Check Website Traffic As Accurately As Possible
18 août 2023, par Erin — Analytics TipsIf you want to learn about the health of your website and the success of your digital marketing initiatives, there are few better ways than checking your website traffic.
It’s a great way to get a quick dopamine hit when things are up, but you can also use traffic levels to identify issues, learn more about your users or benchmark your performance. That means you need a reliable and easy way to check your website traffic over time — as well as a way to check out your competitors’ traffic levels, too.
In this article, we’ll show you how to do just that. You’ll learn how to check website traffic for both your and your competitor’s sites and discover why some methods of checking website traffic are better than others.
Why check website traffic ?
Dopamine hits aside, it’s important to constantly monitor your website’s traffic for several reasons.
Benchmark site performance
Keeping regular tabs on your traffic levels is a great way to track your website’s performance over time. It can help you plan for the future or identify problems.
For instance, growing traffic levels may mean expanding your business’s offering or investing in more inventory. On the flip side, decreasing traffic levels may suggest it’s time to revamp your marketing strategies or look into issues impacting your SEO.
Analyse user behaviour
Checking website traffic and user behaviour lets marketing managers understand how users interact with your website. Which pages are they visiting ? Which CTAs do they click on ? What can you do to encourage users to take the actions you want ? You can also identify issues that lead to high bounce rates and other problems.
The better you understand user behaviour, the easier it will be to give them what they want. For example, you may find that users spend more time on your landing pages than they do your blog pages. You could use that information to revise how you create blog posts or focus on creating more landing pages.
Improve the user experience
Once you understand how users behave on your website, you can use that information to fix errors, update your content and improve the user experience for the site.
You can even personalise the experience for customers, leading to significant growth. Research shows companies that grow faster derive 40% more of their revenue from personalisation.
That could come in the form of sweeping personalisations — like rearranging your website’s navigation bar based on user behaviour — or individual personalisation that uses analytics to transform sections or entire pages of your site based on user behaviour.
Optimise marketing strategies
You can use website traffic reports to understand where users are coming from and optimise your marketing plan accordingly. You may want to double down on organic traffic, for instance, or invest more in PPC advertising. Knowing current traffic estimates and how these traffic levels have trended over time can help you benchmark your campaigns and prioritise your efforts.
Increasing traffic levels from other countries can also help you identify new marketing opportunities. If you start seeing significant traffic levels from a neighbouring country or a large market, it could be time to take your business international and launch a cross-border campaign.
Filter unwanted traffic
A not-insignificant portion of your site’s traffic may be coming from bots and other unwanted sources. These can compromise the quality of your analytics and make it harder to draw insights. You may not be able to get rid of this traffic, but you can use analytics tools to remove it from your stats.
How to check website traffic on Matomo
If you want to check your website’s traffic, you’d be forgiven for heading to Google Analytics first. It’s the most popular analytics tool on the market, after all. But if you want a more reliable assessment of your website’s traffic, then we recommend using Matomo alongside Google Analytics.
The Matomo web analytics platform is an open-source solution that helps you collect accurate data about your website’s traffic and make more informed decisions as a result — all while enhancing the customer experience and ensuring GDPR compliance and user privacy.
Matomo also offers multiple ways to check website traffic :
Let’s look at all of them one by one.
The visits log report is a unique rundown of all of the individual visitors to your site. This offers a much more granular view than other tools that just show the total number of visitors for a given period.
You can access the visits log report by clicking on the reporting menu, then clicking Visitor and Visits Log. From there, you’ll be able to scroll through every user session and see the following information :
- The location of the user
- The total number of actions they took
- The length of time on site
- How they arrived at your site
- And the device they used to access your site
This may be overwhelming if your site receives thousands of visitors at a time. But it’s a great way to understand users at an individual level and appreciate the lifetime activity of specific users.
The Real-time visitor map is a visual display of users’ location for a given timeframe. If you have an international website, it’s a fantastic way to see exactly where in the world your traffic comes from.
You can access the Real-time Visitor Map by clicking Visitor in the main navigation menu and then Real-time Map. The map itself is colour-coded. Larger orange bubbles represent recent visits, and smaller dark orange and grey bubbles represent older visits. The map will refresh every five seconds, and new users appear with a flashing effect.
If you run TV or radio adverts, Matomo’s Real-time Map provides an immediate read on the effectiveness of your campaign. If your map lights up in the minutes following your ad, you know it’s been effective. It can also help you identify the source of bot attacks, too.
Finally, the Visits in Real-time report provides a snapshot of who is browsing your website. You can access this report under Visitors > Real-time and add it to your custom dashboards as a widget.
Open the report, and you’ll see the real-time flow of your site’s users and counters for visits and pageviews over the last 30 minutes and 24 hours. The report refreshes every five seconds with new users added to the top of the report with a fade-in effect.
The report provides a snapshot of each visitor, including :
- Whether they are new or a returning
- Their country
- Their browser
- Their operating system
- The number of actions they took
- The time they spent on the site
- The channel they came in from
- Whether the visitor converted a goal
3 other ways to check website traffic
You don’t need to use Matomo to check your website traffic. Here are three other tools you can use instead.
How to check website traffic on Google Analytics
Google Analytics is usually the first starting point for anyone looking to check their website traffic. It’s free to use, incredibly popular and offers a wide range of traffic reports.
Google Analytics lets you break down historical traffic data almost any way you wish. You can split traffic by acquisition channel (organic, social media, direct, etc.) by country, device or demographic.
It also provides real-time traffic reports that give you a snapshot of users on your site right now and over the last 30 minutes.
Google Analytics may be one of the most popular ways to check website traffic, but it could be better. Google Analytics 4 is difficult to use compared to its predecessor, and it also limits the amount of data you can track in accordance with privacy laws. If users refuse your cookie consent, Google Analytics won’t record these visits. In other words, you aren’t getting a complete view of your traffic by using Google Analytics alone.
That’s why it’s important to use Google Analytics alongside other web analytics tools (like Matomo) that don’t suffer from the same privacy issues. That way, you can make sure you track every single user who visits your site.
How to check website traffic on Google Search Console
Google Search Console is a free tool from Google that lets you analyse the search traffic that your site gets from Google.
The top-line report shows you how many times your website has appeared in Google Search, how many clicks it has received, the average clickthrough rate and the average position of your website in the search results.
Google Search Console is a great way to understand what you rank for and how much traffic your organic rankings generate. It will also show you which pages are indexed in Google and whether there are any crawling errors.
Unfortunately, Google Search Console is limited if you want to get a complete view of your traffic. While you can analyse search traffic in a huge amount of detail, it will not tell you how users who access your website directly or via social media behave.
How to check website traffic on Similarweb
Similarweb is a website analysis tool that estimates the total traffic of any site on the internet. It is one of the best tools for estimating how much traffic your competitors receive.
What’s great about Similarweb is that it estimates total traffic, not just traffic from search engines like many SEO tools. It even breaks down traffic by different channels, allowing you to see how your website compares against your competitors.
As you can see from the image above, Similarweb provides an estimate of total visits, bounce rate, the average number of pages users view per visit and the average duration on the site. The company also has a free browser extension that lets you check website traffic estimates as you browse the web.
You can use Similarweb for free to a point. But to really get the most out of this tool, you’ll need to upgrade to a premium plan which starts at $125 per user per month.
The price isn’t the only downside of using Similarweb to check the traffic of your own and your competitor’s websites. Ultimately, Similarweb is only an estimate — even if it’s a reasonably accurate one — and it’s no match for a comprehensive analytics tool.
7 website traffic metrics to track
Now that you know how to check your website’s traffic, you can start to analyse it. You can use plenty of metrics to assess the quality of your website traffic, but here are some of the most important metrics to track.
- New visitors : These are users who have never visited your website before. They are a great sign that your marketing efforts are working and your site is reaching more people. But it’s also important to track how they behave on the website to ensure your site caters effectively to new visitors.
- Returning visitors : Returning visitors are coming back to your site for a reason : either they like the content you’re creating or they want to make a purchase. Both instances are great. The more returning visitors, the better.
- Bounce rate : This is a measure of how many users leave your website without taking action. Different analytics tools measure this metric differently.
- Session duration : This is the length of time users spend on your website, and it can be a great gauge of whether they find your site engaging. Especially when combined with the metric below.
- Pages per session : This measures how many different pages users visit on average. The more pages they visit and the longer users spend on your website, the more engaging it is.
- Traffic source : Traffic can come from a variety of sources (organic, direct, social media, referral, etc.) Tracking which sources generate the most traffic can help you analyse and prioritise your marketing efforts.
- User demographics : This broad metric tells you more about who the users are that visit your website, what device they use, what country they come from, etc. While the bulk of your website traffic will come from the countries you target, an influx of new users from other countries can open the door to new opportunities.
Why do my traffic reports differ ?
If you use more than one of the methods above to check your website traffic, you’ll quickly realise that every traffic report differs. In some cases, the reasons are obvious. Any tool that estimates your traffic without adding code to your website is just that : an estimate. Tools like Similarweb will never offer the accuracy of analytics platforms like Matomo and Google Analytics.
But what about the differences between these analytics platforms themselves ? While each platform has a different way of recording user behaviour, significant differences in website traffic reports between analytics platforms are usually a result of how each platform handles user privacy.
A platform like Google Analytics requires users to accept a cookie consent banner to track them. If they accept, great. Google collects all of the data that any other analytics platform does. It may even collect more. If users reject cookie consent banners, however, then Google Analytics can’t track these visitors at all. They simply won’t show up in your traffic reports.
That doesn’t happen with all analytics platforms, however. A privacy-focused alternative like Matomo doesn’t require cookie consent banners (apart from in the United Kingdom and Germany) and can therefore continue to track visitors even after they have rejected a cookie consent screen from Google Analytics. This means that virtually all of your website traffic will be tracked regardless of whether users accept a cookie consent banner or not. And it’s why traffic reports in Matomo are often much higher than they are in Google Analytics.
Given that around half (47.32%) of adults in the European Union refuse to allow the use of personal data tracking for advertising purposes and that 95% of people will reject additional cookies when it is easy to do so, this means you could have vastly different traffic reports — and be missing out on a significant amount of user data.
If you’re serious about using web analytics to improve your website and optimise your marketing campaigns, then it is essential to use another analytics platform alongside Google Analytics.
Get more accurate traffic reports with Matomo
There are several methods to check website traffic. Some, like Similarweb, can provide estimates on your competitors’ traffic levels. Others, like Google Analytics, are free. But data doesn’t lie. Only privacy-focused analytics solutions like Matomo can provide accurate reports that account for every visitor.
Join over one million organisations using Matomo to accurately check their website traffic. Try it for free alongside GA today. No credit card required.