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Collections - Formulaire de création rapide
19 février 2013, par kent1
Mis à jour : Février 2013
Langue : français
Type : Image
Tags : plugin, collection, MediaSPIP 0.2
Autres articles (22)
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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 (...) -
List of compatible distributions
26 avril 2011, par kent1The table below is the list of Linux distributions compatible with the automated installation script of MediaSPIP. Distribution nameVersion nameVersion number Debian Squeeze 6.x.x Debian Weezy 7.x.x Debian Jessie 8.x.x Ubuntu The Precise Pangolin 12.04 LTS Ubuntu The Trusty Tahr 14.04
If you want to help us improve this list, you can provide us access to a machine whose distribution is not mentioned above or send the necessary fixes to add (...)
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A Complete Guide to Metrics in Google Analytics
11 janvier 2024, par ErinThere’s no denying that Google Analytics is the most popular web analytics solution today. Many marketers choose it to understand user behaviour. But when it offers so many different types of metrics, it can be overwhelming to choose which ones to focus on. In this article, we’ll dive into how metrics work in Google Analytics 4 and how to decide which metrics may be most useful to you, depending on your analytics needs.
However, there are alternative web analytics solutions that can provide more accurate data and supplement GA’s existing features. Keep reading to learn how to overcome Google Analytics limitations so you can get the more out of your web analytics.
What is a metric in Google Analytics ?
In Google Analytics, a metric is a quantitative measurement or numerical data that provides insights into specific aspects of user behaviour. Metrics represent the counts or sums of user interactions, events or other data points. You can use GA metrics to better understand how people engage with a website or mobile app.
Unlike the previous Universal Analytics (the previous version of GA), GA4 is event-centric and has automated and simplified the event tracking process. Compared to Universal Analytics, GA4 is more user-centric and lets you hone in on individual user journeys. Some examples of common key metrics in GA4 are :
- Sessions : A group of user interactions on your website that occur within a specific time period. A session concludes when there is no user activity for 30 minutes.
- Total Users : The cumulative count of individuals who accessed your site within a specified date range.
- Engagement Rate : The percentage of visits to your website or app that included engagement (e.g., one more pageview, one or more conversion, etc.), determined by dividing engaged sessions by sessions.
Metrics are invaluable when it comes to website and conversion optimisation. Whether you’re on the marketing team, creating content or designing web pages, understanding how your users interact with your digital platforms is essential.
GA4 metrics vs. dimensions
GA4 uses metrics to discuss quantitative measurements and dimensions as qualitative descriptors that provide additional context to metrics. To make things crystal clear, here are some examples of how metrics and dimensions are used together :
- “Session duration” = metric, “device type” = dimension
- In this situation, the dimension can segment the data by device type so you can optimise the user experience for different devices.
- “Bounce rate” = metric, “traffic source/medium” = dimension
- Here, the dimension helps you segment by traffic source to understand how different acquisition channels are performing.
- “Conversion rate” = metric, “Landing page” = dimension
- When the conversion rate data is segmented by landing page, you can better see the most effective landing pages.
You can get into the nitty gritty of granular analysis by combining metrics and dimensions to better understand specific user interactions.
How do Google Analytics metrics work ?
Before diving into the most important metrics you should track, let’s review how metrics in GA4 work.
- Tracking code implementation
The process begins with implementing Google Analytics 4 tracking code into the HTML of web pages. This tracking code is JavaScript added to each website page — it collects data related to user interactions, events and other important tidbits.
- Data collection
As users interact with the website or app, the Google Analytics 4 tracking code captures various data points (i.e., page views, clicks, form submissions, custom events, etc.). This raw data is compiled and sent to Google Analytics servers for processing.
- Data processing algorithms
When the data reaches Google Analytics servers, data processing algorithms come into play. These algorithms analyse the incoming raw data to identify the dataset’s trends, relationships and patterns. This part of the process involves cleaning and organising the data.
- Segmentation and customisation
As discussed in the previous section, Google Analytics 4 allows for segmentation and customisation of data with dimensions. To analyse specific data groups, you can define segments based on various dimensions (e.g., traffic source, device type). Custom events and user properties can also be defined to tailor the tracking to the unique needs of your website or app.
- Report generation
Google Analytics 4 can make comprehensive reports and dashboards based on the processed and segmented data. These reports, often in the form of graphs and charts, help identify patterns and trends in the data.
What are the most important Google Analytics metrics to track ?
In this section, we’ll identify and define key metrics for marketing teams to track in Google Analytics 4.
- Pageviews are the total number of times a specific page or screen on your website or app is viewed by visitors. Pageviews are calculated each time a web page is loaded or reloaded in a browser. You can use this metric to measure the popularity of certain content on your website and what users are interested in.
- Event tracking monitors user interactions with content on a website or app (i.e., clicks, downloads, video views, etc.). Event tracking provides detailed insights into user engagement so you can better understand how users interact with dynamic content.
- Retention rate can be analysed with a pre-made overview report that Google Analytics 4 provides. This user metric measures the percentage of visitors who return to your website or app after their first visit within a specific time period. Retention rate = (users with subsequent visits / total users in the initial cohort) x 100. Use this information to understand how relevant or effective your content, user experience and marketing efforts are in retaining visitors. You probably have more loyal/returning buyers if you have a high retention rate.
- Average session duration calculates the average time users spend on your website or app per session. Average session duration = total duration of all sessions / # of sessions. A high average session duration indicates how interested and engaged users are with your content.
- Site searches and search queries on your website are automatically tracked by Google Analytics 4. These metrics include search terms, number of searches and user engagement post-search. You can use site search metrics to better understand user intent and refine content based on users’ searches.
- Entrance and exit pages show where users first enter and leave your site. This metric is calculated by the percentage of sessions that start or end on a specific page. Knowing where users are entering and leaving your site can help identify places for content optimisation.
- Device and browser info includes data about which devices and browsers websites or apps visitors use. This is another metric that Google Analytics 4 automatically collects and categorises during user sessions. You can use this data to improve the user experience on relevant devices and browsers.
- Bounce rate is the percentage of single-page sessions where users leave your site or app without interacting further. Bounce rate = (# of single-page sessions / total # of sessions) x 100. Bounce rate is useful for determining how effective your landing pages are — pages with high bounce rates can be tweaked and optimised to enhance user engagement.
Examples of how Matomo can elevate your web analytics
Although Google Analytics is a powerful tool for understanding user behaviour, it also has privacy concerns, limitations and a list of issues. Another web analytics solution like Matomo can help fill those gaps so you can get the most out of your analytics.
- Cross-verify and validate your observations from Google Analytics by comparing data from Matomo’s Heatmaps and Session Recordings for the same pages. This process grants you access to these advanced features that GA4 does not offer.
- Matomo provides you with greater accuracy thanks to its privacy-friendly design. Unlike GA4, Matomo can be configured to operate without cookies. This means increased accuracy without intrusive cookie consent screens interrupting the user experience. It’s a win for you and for your users. Matomo also doesn’t apply data sampling so you can rest assured that the data you see is 100% accurate.
- Unlike GA4, Matomo offers direct access to customer support so you can save time sifting through community forum threads and online documentation. Gain personalised assistance and guidance for your analytics questions, and resolve issues efficiently.
- Matomo’s Form Analytics and Media Analytics extend your analytics capabilities beyond just pageviews and event tracking.
Tracking user interactions with forms can tell you which fields users struggle with, common drop-off points, in addition to which parts of the form successfully guide visitors towards submission.
See first-hand how Concrete CMS 3x their leads using Matomo’s Form Analytics.
Media Analytics can provide insight into how users interact with image, video, or audio content on your website. You can use this feature to assess the relevance and popularity of specific content by knowing what your audience is engaged by.
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Final thoughts
Although Google Analytics is a powerful tool on its own, Matomo can elevate your web analytics by offering advanced features, data accuracy and a privacy-friendly design. Don’t play a guessing game with your data — Matomo provides 100% accurate data so you don’t have to rely on AI or machine learning to fill in the gaps. Matomo can be configured cookieless which also provides you with more accurate data and a better user experience.
Lastly, Matomo is fully compliant with some of the world’s strictest privacy regulations like GPDR. You won’t have to sacrifice compliance for accurate, high quality data.
Start your 21-day free trial of Matomo — no credit card required.
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21 day free trial. No credit card required.
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How to Conduct a Customer Journey Analysis (Step-by-Step)
9 mai 2024, par ErinYour customers are everything.
Treat them right, and you can generate recurring revenue for years. Treat them wrong ; you’ll be spinning your wheels and dealing with churn.
How do you give your customers the best experience possible so they want to stick around ?
Improve their customer experience.
How ?
By conducting a customer journey analysis.
When you know how your customers experience your business, you can improve it to meet and exceed customer expectations.
In this guide, we’ll break down how the customer journey works and give you a step-by-step guide to conduct a thorough customer journey analysis so you can grow your brand.
What is a customer journey analysis ?
Every customer you’ve ever served went on a journey to find you.
From the moment they first heard of you, to the point that they became a customer.
Everything in between is the customer journey.
A customer journey analysis is how you track and analyse how your customers use different channels to interact with your brand.
Analysing your customer journey involves identifying the customer’s different touchpoints with your business so you can understand how it impacts their experience.
This means looking at every moment they interacted with your brand before, during and after a sale to help you gain actionable insights into their experience and improve it to reach your business objectives.
Your customers go through specific customer touchpoints you can track. By analysing this customer journey from a bird’s eye view, you can get a clear picture of the entire customer experience.
4 benefits of customer journey analysis
Before we dive into the different steps involved in a customer journey analysis, let’s talk about why it’s vital to analyse the customer journey.
By regularly analysing your customer journey, you’ll be able to improve the entire customer experience with practical insights, allowing you to :
Understand your customers better
What’s one key trait all successful businesses have ?
They understand their customers.
By analysing your customer journey regularly, you’ll gain new insights into their wants, needs, desires and behaviours, allowing you to serve them better. These insights will show you what led them to buy a product (or not).
For example, through conducting a customer journey analysis, a company might find out that customers who come from LinkedIn are more likely to buy than those coming from Facebook.
Find flaws in your customer journey
Nobody wants to hear they have flaws. But the reality is your customer journey likely has a few flaws you could improve.
By conducting customer journey analysis consistently, you’ll be able to pinpoint precisely where you’re losing prospects along the way.
For example, you may discover you’re losing customers through Facebook Ads. Or you may find your email strategy isn’t as good as it used to be.
But it’s not just about the channel. It could be a transition between two channels. For example, you may have great engagement on Instagram but are not converting them into email subscribers. The issue may be that your transition between the two channels has a leak.
Or you may find that prospects using certain devices (i.e., mobile, tablet, desktop) have lower conversions. This might be due to design and formatting issues across different devices.
By looking closely at your customer journey and the different customer touchpoints, you’ll see issues preventing prospects from turning into leads or customers from returning to buy again as loyal customers.
Gain insights into how you can improve your brand
Your customer journey analysis won’t leave you with a list of problems. Instead, you’ll have a list of opportunities.
Since you’ll be able to better understand your customers and where they’re falling off the sales funnel, you’ll have new insights into how you can improve the experience and grow your brand.
For example, maybe you notice that your visitors are getting stuck at one stage of the customer journey and you’re trying to find out why.
So, you leverage Matomo’s heatmaps, sessions recordings and scroll depth to find out more.
In the case below, we can see that Matomo’s scroll map is showing that only 65% of the visitors are reaching the main call to action (to write a review).
To try to push for higher conversions and get more reviews, we could consider moving that button higher up on the page, ideally above the fold.
Rather than guessing what’s preventing conversions, you can use user behaviour analytics to “step in our user’s shoes” so you can optimise faster and with confidence.
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Grow your revenue
By taking charge of your customer journey, you can implement different strategies that will help you increase your reach, gain more prospects, convert more prospects into customers and turn regulars into loyal customers.
Using customer journey analysis will help you optimise those different touchpoints to maximise the ROI of your channels and get the most out of each marketing activity you implement.
7 steps to conduct a customer journey analysis
Now that you know the importance of conducting a customer journey analysis regularly, let’s dive into how to implement an analysis.
Here are the seven steps you can take to analyse the customer journey to improve your customer experience :
1. Map out your customer journey
Your first step to conducting an effective customer journey analysis is to map your entire customer journey.
Customer journey mapping means looking at several factors :
- Buying process
- Customer actions
- Buying emotions
- Buying pain points
- Solutions
Once you have an overview of your customer journey maps, you’ll gain insights into your customers, their interests and how they interact with your brand.
After this, it’s time to dive into the touchpoints.
2. Identify all the customer touchpoints
To improve your customer journey, you need to know every touchpoint a customer can (and does) make with your brand.
This means taking note of every single channel and medium they use to communicate with your brand :
- Website
- Social media
- Search engines (SEO)
- Email marketing
- Paid advertising
- And more
Essentially, anywhere you communicate and interact with your customers is fair game to analyse.
If you want to analyse your entire sales funnel, you can try Matomo, a privacy-friendly web analytics tool.
You should make sure to split up your touchpoints into different customer journey stages :
- Awareness
- Consideration
- Conversion
- Advocacy
Then, it’s time to move on to how customers interact on these channels.
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3. Measure how customers interact on each channel
To understand the customer journey, you can’t just know where your customers interact with you. You end up learning how they’re interacting.
This is only possible by measuring customer interactions.
How ?
By using a web analytics tool like Matomo.
With Matomo, you can track every customer action on your website.
This means anytime they :
- Visit your website
- View a web page
- Click a link
- Fill out a form
- Purchase a product
- View different media
- And more
You should analyse your engagement on your website, apps and other channels, like email and social media.
4. Implement marketing attribution
Now that you know where your customers are and how they interact, it’s time to analyse the effectiveness of each channel based on your conversion rates.
Implementing marketing attribution (or multi-touch attribution) is a great way to do this.
Attribution is how you determine which channels led to a conversion.
While single-touch attribution models credit one channel for a conversion, marketing attribution gives credit to a few channels.
For example, let’s say Bob is looking for a new bank. He sees an Instagram post and finds himself on HSBC’s website. After looking at a few web pages, he attends a webinar hosted by HSBC on financial planning and investment strategies. One week later, he gets an email from HSBC following up on the webinar. Then, he decides to sign up for HSBC’s online banking.
Single touch attribution would attribute 100% of the conversion to email, which doesn’t show the whole picture. Marketing attribution would credit all channels : social media, website content, webinars and email.
Matomo offers multiple attribution models. These models leverage different weighting factors, like time decay or linear, so that you can allocate credit to each touchpoint based on its impact.
Matomo’s multi-touch attribution reports give you in-depth insights into how revenue is distributed across different channels. These detailed reports help you analyse each channel’s contribution to revenue generation so you can optimise the customer journey and improve business outcomes.
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Get the web insights you need, without compromising data accuracy.
5. Use a funnels report to find where visitors are leaving
Once you set up your marketing attribution, it’s time to analyse where visitors are falling off.
You can leverage Matomo funnels to find out the conversion rate at each step of the journey on your website. Funnel reports can help you see exactly where visitors are falling through the cracks so you can increase conversions.
6. Analyse why visitors aren’t converting
Once you can see where visitors are leaving, you can start to understand why.
For example, let’s say you analyse your funnels report in Matomo and see your landing page is experiencing the highest level of drop-offs.
You can also use form analytics to find out why users aren’t converting on your landing pages – a crucial part of the customer journey.
7. A/B test to improve the customer journey
The final step to improve your customer journey is to conduct A/B tests. These are tests where you test one version of a landing page to see which one converts better, drives more traffic, or generates more revenue.
For example, you could create two versions of a header on your website and drive 50% of your traffic to each version. Then, once you’ve got your winner, you can keep that as your new landing page.
Using the data from your A/B tests, you can optimise your customer journey to help convert more prospects into customers.
Use Matomo to improve your customer journey analysis
Now that you understand why it’s important to conduct customer journey analysis regularly and how it works, it’s time to put this into practice.
To improve the customer journey, you need to understand what’s happening at each stage of your funnel.
Matomo gives you insights into your customer journey so you can improve website performance and convert more visitors into customers.
Used by over 1 million websites, Matomo is the leading privacy-friendly web analytics solution in the world.
Matomo provides you with accurate, unsampled data so you understand exactly what’s going on with your website performance.
The best part ?
It’s easy to use and is compliant with the strictest privacy regulations.
Try Matomo free for 21-days and start Improving your customer journey. No credit card required.
Try Matomo for Free
21 day free trial. No credit card required.
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Linear Attribution Model : What Is It and How Does It Work ?
16 février 2024, par ErinWant a more in-depth way to understand the effectiveness of your marketing campaigns ? Then, the linear attribution model could be the answer.
Although you can choose from several different attribution models, a linear model is ideal for giving value to every touchpoint along the customer journey. It can help you identify your most effective marketing channels and optimise your campaigns.
So, without further ado, let’s explore what a linear attribution model is, when you should use it and how you can get started.
What is a linear attribution model ?
A linear attribution model is a multi-touch method of marketing attribution where equal credit is given to each touchpoint. Every marketing channel used across the entire customer journey gets credit, and each is considered equally important.
So, if a potential customer has four interactions before converting, each channel gets 25% of the credit.
Let’s look at how linear attribution works in practice using a hypothetical example of a marketing manager, Sally, who is looking for an alternative to Google Analytics.
Sally starts her conversion path by reading a Matomo article comparing Matomo to Google Analytics she finds when searching on Google. A few days later she signs up for a webinar she saw on Matomo’s LinkedIn page. Two weeks later, Sally gets a sign-off from her boss and decides to go ahead with Matomo. She visits the website and starts a free trial by clicking on one of the paid Google Ads.
Using a linear attribution model, we credit each of the channels Sally uses (organic traffic, organic social, and paid ads), ensuring no channel is overlooked in our marketing analysis.
Are there other types of attribution models ?
Absolutely. There are several common types of attribution models marketing managers can use to measure the impact of channels in different ways.
- First interaction : Also called a first-touch attribution model, this method gives all the credit to the first channel in the customer journey. This model is great for optimising the top of your sales funnel.
- Last interaction : Also called a last-touch attribution model, this approach gives all the credit to the last channel the customer interacts with. It’s a great model for optimising the bottom of your marketing funnel.
- Last non-direct interaction : This attribution model excludes direct traffic and credits the previous touchpoint. This is a fantastic alternative to a last-touch attribution model, especially if most customers visit your website before converting.
- Time decay attribution model : This model adjusts credit according to the order of the touchpoints. Those nearest the conversion get weighted the highest.
- Position-based attribution model : This model allocates 40% of the credit to the first and last touchpoints and splits the remaining 20% evenly between every other interaction.
Why use a linear attribution model ?
Marketing attribution is vital if you want to understand which parts of your marketing strategy are working. All of the attribution models described above can help you achieve this to some degree, but there are several reasons to choose a linear attribution model in particular.
It uses multi-touch attribution
Unlike single-touch attribution models like first and last interaction, linear attribution is a multi-touch attribution model that considers every touchpoint. This is vital to get a complete picture of the modern customer journey, where customers interact with companies between 20 and 500 times.
Single-touch attribution models can be misleading by giving conversion credit to a single channel, especially if it was the customer’s last use. In our example above, Sally’s last interaction with our brand was through a paid ad, but it was hardly the most important.
It’s easy to understand
Attribution models can be complicated, but linear attribution is easy to understand. Every touchpoint gets the same credit, allowing you to see how your entire marketing function works. This simplicity also makes it easy for marketers to take action.
It’s great for identifying effective marketing channels
Because linear attribution is one of the few models that provides a complete view of the customer journey, it’s easy to identify your most common and influential touchpoints.
It accounts for the top and bottom of your funnel, so you can also categorise your marketing channels more effectively and make more informed decisions. For example, PPC ads may be a more common bottom-of-the-full touchpoint and should, therefore, not be used to target broad, top-of-funnel search terms.
Are there any reasons not to use linear attribution ?
Linear attribution isn’t perfect. Like all attribution models, it has its weaknesses. Specifically, linear attribution can be too simple, dilute conversion credit and unsuitable for long sales cycles.
It can be too simple
Linear attribution lacks nuance. It only considers touchpoints while ignoring other factors like brand image and your competitors. This is true for most attribution models, but it’s still important to point it out.
It can dilute conversion credit
In reality, not every touchpoint impacts conversions to the same extent. In the example above, the social media post promoting the webinar may have been the most effective touchpoint, but we have no way of measuring this.
The risk with using a linear model is that credit can be underestimated and overestimated — especially if you have a long sales cycle.
It’s unsuitable for very long sales cycles
Speaking of long sales cycles, linear attribution models won’t add much value if your customer journey contains dozens of different touchpoints. Credit will get diluted to the point where analysis becomes impossible, and the model will also struggle to measure the precise ways certain touchpoints impact conversions.
Should you use a linear attribution model ?
A linear attribution model is a great choice for any company with shorter sales cycles or a reasonably straightforward customer journey that uses multiple marketing channels. In these cases, it helps you understand the contribution of each touchpoint and find your best channels.
It’s also a practical choice for small businesses and startups that don’t have a team of data scientists on staff or the budget to hire outside help. Because it’s so easy to set up and understand, anyone can start generating insights using this model.
How to set up a linear attribution model
Are you sold on the idea of using a linear attribution model ? Then follow the steps below to get started :
Choose a marketing attribution tool
Given the market is worth $3.1 billion, you won’t be surprised to learn there are plenty of tools to choose from. But choose carefully. The tool you pick can significantly impact your success with attribution modelling.
Take Google Analytics, for instance. While GA4 offers several marketing attribution models for free, including linear attribution, it lacks accuracy due to cookie consent rejection and data sampling.
Accurate marketing attribution is included as a feature in Matomo Cloud and is available as a plugin for Matomo On-Premise users. We support a full range of attribution models that use 100% accurate data because we don’t use data sampling, and cookie consent isn’t an issue (with the exception of Germany and the UK). That means you can trust our insights.
Matomo’s marketing attribution is available out of the box, and we also provide access to raw data, allowing you to develop your custom attribution model.
Collect data
The quality of your marketing attribution also depends on the quality and quantity of your data. It’s why you need to avoid a platform that uses data sampling.
This should include :
- General data from your analytics platform, like pages visited and forms filled
- Goals and conversions, which we’ll discuss in more detail in the next step
- Campaign tracking data so you can monitor the behaviour of traffic from different referral channels
- Behavioural data from features like Heatmaps or Session Recordings
Set up goals and conversions
You can’t assign conversion values to customer journey touchpoints if you don’t have conversion goals in place. That’s why the next step of the process is to set up conversion tracking in your web analytics platform.
Depending on your type of business and the product you sell, conversions could take one of the following forms :
- A product purchase
- Signing up for a webinar
- Downloading an ebook
- Filling in a form
- Starting a free trial
Setting up these kinds of goals is easy if you use Matomo.
Just head to the Goals section of the dashboard, click Manage Goals and then click the green Add A New Goal button.
Fill in the screen below, and add a Goal Revenue at the bottom of the page. Doing so will mean Matomo can automatically calculate the value of each touchpoint when using your attribution model.
If your analytics platform allows it, make sure you also set up Event Tracking, which will allow you to analyse how many users start to take a desired action (like filling in a form) but never complete the task.
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Test and validate
As we’ve explained, linear attribution is a great model in some scenarios, but it can fall short if you have a long or complex sales funnel. Even if you’re sure it’s the right model for your company, testing and validating is important.
Ideally, your chosen attribution tool should make this process pretty straightforward. For example, Matomo’s Marketing Attribution feature makes comparing and contrasting three different attribution models easy.
Here we compare the performance of three attribution models—linear, first-touch, and last-non-direct—in Matomo’s Marketing Attribution dashboard, providing straightforward analysis.
If you think linear attribution accurately reflects the value of your channels, you can start to analyse the insights it generates. If not, then consider using another attribution model.
Don’t forget to take action from your marketing efforts, either. Linear attribution helps you spot the channels that contribute most to conversions, so allocate more resources to those channels and see if you can improve your conversion rate or boost your ROI.
Make the most of marketing attribution with Matomo
A linear attribution model lets you measure every touchpoint in your customer journey. It’s an easy attribution model to start with and lets you identify and optimise your most effective marketing channels.
However, accurate data is essential if you want to benefit the most from marketing attribution data. If your web analytics solution doesn’t play nicely with cookies or uses sampled data, then your linear model isn’t going to tell you the whole story.
That’s why over 1 million sites trust Matomo’s privacy-focused web analytics, ensuring accurate data for a comprehensive understanding of customer journeys.
Now you know what linear attribution modelling is, start employing the model today by signing up for a free 21-day trial, no credit card required.
Try Matomo for Free
21 day free trial. No credit card required.