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Soumettre améliorations et plugins supplémentaires
10 avril 2011Si vous avez développé une nouvelle extension permettant d’ajouter une ou plusieurs fonctionnalités utiles à MediaSPIP, faites le nous savoir et son intégration dans la distribution officielle sera envisagée.
Vous pouvez utiliser la liste de discussion de développement afin de le faire savoir ou demander de l’aide quant à la réalisation de ce plugin. MediaSPIP étant basé sur SPIP, il est également possible d’utiliser le liste de discussion SPIP-zone de SPIP pour (...) -
Configurer la prise en compte des langues
15 novembre 2010, par kent1Accéder à la configuration et ajouter des langues prises en compte
Afin de configurer la prise en compte de nouvelles langues, il est nécessaire de se rendre dans la partie "Administrer" du site.
De là, dans le menu de navigation, vous pouvez accéder à une partie "Gestion des langues" permettant d’activer la prise en compte de nouvelles langues.
Chaque nouvelle langue ajoutée reste désactivable tant qu’aucun objet n’est créé dans cette langue. Dans ce cas, elle devient grisée dans la configuration et (...) -
Le profil des utilisateurs
12 avril 2011, par kent1Chaque utilisateur dispose d’une page de profil lui permettant de modifier ses informations personnelle. Dans le menu de haut de page par défaut, un élément de menu est automatiquement créé à l’initialisation de MediaSPIP, visible uniquement si le visiteur est identifié sur le site.
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Attribution Tracking (What It Is and How It Works)
23 février 2024, par ErinFacebook, TikTok, Google, email, display ads — which one is best to grow your business ? There’s one proven way to figure it out : attribution tracking.
Marketing attribution allows you to see which channels are producing the best results for your marketing campaigns.
In this guide, we’ll show you what attribution tracking is, why it’s important and how you can leverage it to accelerate your marketing success.
What is attribution tracking ?
By 2026, the global digital marketing industry is projected to reach $786.2 billion.
With nearly three-quarters of a trillion U.S. dollars being poured into digital marketing every year, there’s no doubt it dominates traditional marketing.
The question is, though, how do you know which digital channels to use ?
By measuring your marketing efforts with attribution tracking.
So, what is attribution tracking ?
Attribution tracking is where you use software to keep track of different channels and campaign efforts to determine which channel you should attribute conversion to.
In other words, you can (and should) use attribution tracking to analyse which channels are pushing the needle and which ones aren’t.
By tracking your marketing efforts, you’ll be able to accurately measure the scale of impact each of your channels, campaigns and touchpoints have on a customer’s purchasing decision.
If you don’t track your attribution, you’ll end up blindly pouring time, money, and effort into activities that may or may not be helpful.
Attribution tracking simply gives you insight into what you’re doing right as a marketer — and what you’re doing wrong.
By understanding which efforts and channels are driving conversions and revenue, you’ll be able to properly allocate resources toward winning channels to double down on growth.
Matomo lets you track attribution across various channels. Whether you’re looking to track your conversions through organic, referral websites, campaigns, direct traffic, or social media, you can see all your conversions in one place.
Try Matomo for Free
Get the web insights you need, without compromising data accuracy.
Why attribution tracking is important
Attribution tracking is crucial to succeed with your marketing since it shows you your most valuable channels.
It takes the guesswork out of your efforts.
You don’t need to scratch your head wondering what made your campaigns a success (or a failure).
While most tools show you last click attribution by default, using attribution tracking, or marketing attribution, you can track revenue and conversions for each touchpoint.
For example, a Facebook ad might have no led to a conversion immediately. But, maybe the visitor returned to your website two weeks later through your email campaign. Attribution tracking will give credit over longer periods of time to see the bigger picture of how your marketing channels are impacting your overall performance.
Here are five reasons you need to be using attribution tracking in your business today :
1. Measure channel performance
The most obvious way attribution tracking helps is to show you how well each channel performs.
When you’re using a variety of marketing channels to reach your audience, you have to know what’s actually doing well (and what’s not).
This means having clarity on the performance of your :
- Emails
- Google Ads
- Facebook Ads
- Social media marketing
- Search engine optimisation (SEO)
- And more
Attribution tracking allows you to measure each channel’s ROI and identify how much each channel impacted your campaigns.
It gives you a more accurate picture of the performance of each channel and each campaign.
With it, you can easily break down your channels by how much they drove sales, conversions, signups, or other actions.
With this information, you can then understand where to further allocate your resources to fuel growth.
2. See campaign performance over longer periods of time
When you start tracking your channel performance with attribution tracking, you’ll gain new insights into how well your channels and campaigns are performing.
The best part — you don’t just get to see recent performance.
You get to track your campaign results over weeks or months.
For example, if someone found you through Google by searching a question that your blog had an answer to, but they didn’t convert, your traditional tracking strategy would discount SEO.
But, if that same person clicked a TikTok ad you placed three weeks later, came back, and converted — SEO would receive some attribution on the conversion.
Using an attribution tracking tool like Matomo can help paint a holistic view of how your marketing is really doing from channel to channel over the long run.
Try Matomo for Free
Get the web insights you need, without compromising data accuracy.
3. Increase revenue
Attribution tracking has one incredible benefit for marketers : optimised marketing spend.
When you begin looking at how well your campaigns and your channels are performing, you’ll start to see what’s working.
Attribution tracking gives you clarity into the performance of campaigns since it’s not just looking at the first time someone clicks through to your site. It’s looking at every touchpoint a customer made along the way to a conversion.
By understanding what channels are most effective, you can pour more resources like time, money and labour into those effective channels.
By doubling down on the winning channels, you’ll be able to grow like never before.
Rather than trying to “diversify” your marketing efforts, lean into what’s working.
This is one of the key strategies of an effective marketer to maximise your campaign returns and experience long-term success in terms of revenue.
4. Improve profit margins
The final benefit to attribution tracking is simple : you’ll earn more profit.
Think about it this way : let’s say you’re putting 50% of your marketing spend into Facebook ads and 50% of your spend into email marketing.
You do this for one year, allocating $500,000 to Facebook and $500,000 to email.
Then, you start tracking attribution.
You find that your Facebook ads are generating $900,000 in revenue.
That’s a 1,800% return on your investment.
Not bad, right ?
Well, after tracking your attribution, you see what your email revenue is.
In the past year, you generated $1.7 million in email revenue.
That’s a 3,400% return on your investment (close to the average return of email marketing across all industries).
In this scenario, you can see that you’re getting nearly twice as much of a return on your marketing spend with email.
So, the following year, you decide to go for a 75/25 split.
Instead of putting $500,000 into both email and Facebook ads and email, you put $750,000 into email and $250,000 into Facebook ads.
You’re still diversifying, but you’re doubling down on what’s working best.
The result is that you’ll be able to get more revenue by investing the same amount of money, leaving you with higher profit margins.
Different types of marketing attribution tracking
There are several types of attribution tracking models in marketing.
Depending on your goals, your business and your preferred method, there are a variety of types of attribution tracking you can use.
Here are the six main types of attribution tracking :
1. Last interaction
Last interaction attribution model is also called “last touch.”
It’s one of the most common types of attribution. The way it works is to give 100% of the credit to the final channel a customer interacted with before they converted into a customer.
This could be through a paid ad, direct traffic, or organic search.
One potential drawback of last interaction is that it doesn’t factor in other channels that may have assisted in the conversion. However, this model can work really well depending on the business.
2. First interaction
This is the opposite of the previous model.
First interaction, or “first touch,” is all about the first interaction a customer has with your brand.
It gives 100% of the credit to the channel (i.e. a link clicked from a social media post). And it doesn’t report or attribute anything else to another channel that someone may have interacted with in your marketing mix.
For example, it won’t attribute the conversion or revenue if the visitor then clicked on an Instagram ad and converted. All credit would be given to the first touch which in this case would be the social media post.
The first interaction is a good model to use at the top of your funnel to help establish which channels are bringing leads in from outside your audience.
3. Last non-direct
Another model is called the last non-direct attribution model.
This model seeks to exclude direct traffic and assigns 100% credit for a conversion to the final channel a customer interacted with before becoming a customer, excluding clicks from direct traffic.
For instance, if someone first comes to your website from an emai campaignl, and then, a week later, directly visits and buys a product, the email campaign gets all the credit for the sale.
This attribution model tells a bit more about the whole sales process, shedding some more light on what other channels may have influenced the purchase decision.
4. Linear
Another common attribution model is linear.
This model distributes completely equal credit across every single touchpoint (that’s tracked).
Imagine someone comes to your website in different ways : first, they find it through a Google search, then they click a link in an email from your campaign the next day, followed by visiting from a Facebook post a few days later, and finally, a week later, they come from a TikTok ad.
Here’s how the attribution is divided among these sources :
- 25% Organic
- 25% Email
- 25% Facebook
- 25% TikTok ad
This attirubtion model provides a balanced perspective on the contribution of various sources to a user’s journey on your website.
5. Position-based
Position-based attribution is when you give 40% credit to both the first and last touchpoints and 20% credit is spread between the touchpoints in between.
This model is preferred if you want to identify the initial touchpoint that kickstarted a conversion journey and the final touchpoint that sealed the deal.
The downside is that you don’t gain much insight into the middle of the customer journey, which can make it hard to make effective decisions.
For example, someone may have been interacting with your email newsletter for seven weeks, which allowed them to be nurtured and build a relationship with you.
But that relationship and trust-building effort will be overlooked by the blog post that brought them in and the social media ad that eventually converted them.
6. Time decay
The final attribution model is called time decay attribution.
This is all about giving credit based on the timing of the interactions someone had with your brand.
For example, the touchpoints that just preceded the sale get the highest score, while the first touchpoints get the lowest score.
For example, let’s use that scenario from above with the linear model :
- 25% SEO
- 25% Email
- 25% Facebook ad
- 25% Organic TikTok
But, instead of splitting credit by 25% to each channel, you weigh the ones closer to the sale with more credit.
Instead, time decay may look at these same channels like this :
- 5% SEO (6 weeks ago)
- 20% Email (3 weeks ago)
- 30% Facebook ad (1 week ago)
- 45% Organic TikTok (2 days ago)
One downside is that it underestimates brand awareness campaigns. And, if you have longer sales cycles, it also isn’t the most accurate, as mid-stage nurturing and relationship building are underlooked.
Leverage Matomo : A marketing attribution tool
Attribution tracking is a crucial part of leading an effective marketing strategy.
But it’s impossible to do this without the right tools.
A marketing attribution tool can give you insights into your best-performing channels automatically.
One of the best marketing attribution tools available is Matomo, a web analytics tool that helps you understand what’s going on with your website and different channels in one easy-to-use dashboard.
With Matomo, you get marketing attribution as a plug-in or within Matomo On-Premise or for free in Matomo Cloud.
The best part is it’s all done with crystal-clear data. Matomo gives you 100% accurate data since it doesn’t use data sampling on any plans like Google Analytics.
To start tracking attribution today, try Matomo’s 21-day free trial. No credit card required.
Try Matomo for Free
21 day free trial. No credit card required.
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Is Google Analytics Accurate ? 6 Important Caveats
8 novembre 2022, par ErinIt’s no secret that accurate website analytics is crucial for growing your online business — and Google Analytics is often the go-to source for insights.
But is Google Analytics data accurate ? Can you fully trust the provided numbers ? Here’s a detailed explainer.
How Accurate is Google Analytics ? A Data-Backed Answer
When properly configured, Google Analytics (Universal Analytics and Google Analytics 4) is moderately accurate for global traffic collection. That said : Google Analytics doesn’t accurately report European traffic.
According to GDPR provisions, sites using GA products must display a cookie consent banner. This consent is required to collect third-party cookies — a tracking mechanism for identifying users across web properties.
Google Analytics (GA) cannot process data about the user’s visit if they rejected cookies. In such cases, your analytics reports will be incomplete.
Cookie rejection refers to visitors declining or blocking cookies from ever being collected by a specific website (or within their browser). It immediately affects the accuracy of all metrics in Google Analytics.
Google Analytics is not accurate in locations where cookie consent to tracking is legally required. Most consumers don’t like disruptive cookie banners or harbour concerns about their privacy — and chose to reject tracking.
This leaves businesses with incomplete data, which, in turn, results in :
- Lower traffic counts as you’re not collecting 100% of the visitor data.
- Loss of website optimisation capabilities. You can’t make data-backed decisions due to inconsistent reporting
For the above reasons, many companies now consider cookieless website tracking apps that don’t require consent screen displays.
Why is Google Analytics Not Accurate ? 6 Causes and Solutions
A high rejection rate of cookie banners is the main reason for inaccurate Google Analytics reporting. In addition, your account settings can also hinder Google Analytics’ accuracy.
If your analytics data looks wonky, check for these six Google Analytics accuracy problems.
You Need to Secure Consent to Cookies Collection
To be GDPR-compliant, you must display a cookie consent screen to all European users. Likewise, other jurisdictions and industries require similar measures for user data collection.
This is a nuisance for many businesses since cookie rejection undermines their remarketing capabilities. Hence, some try to maximise cookie acceptance rates with dark patterns. For example : hide the option to decline tracking or make the texts too small.
Banner on the left doesn’t provide an evident option to reject all cookies and nudges the user to accept tracking. Banner on the right does a better job explaining the purpose of data collection and offers a straightforward yes/no selection Sadly, not everyone’s treating users with respect. A joint study by German and American researchers found that only 11% of US websites (from a sample of 5,000+) use GDPR-compliant cookie banners.
As a result, many users aren’t aware of the background data collection to which they have (or have not) given consent. Another analysis of 200,000 cookies discovered that 70% of third-party marketing cookies transfer user data outside of the EU — a practice in breach of GDPR.
Naturally, data regulators and activities are after this issue. In April 2022, Google was pressured to introduce a ‘reject all’ cookies button to all of its products (a €150 million compliance fine likely helped with that). Whereas, noyb has lodged over 220 complaints against individual websites with deceptive cookie consent banners.
The takeaway ? Messing up with the cookie consent mechanism can get you in legal trouble. Don’t use sneaky banners as there are better ways to collect website traffic statistics.
Solution : Try Matomo GDPR-Friendly Analytics
Fill in the gaps in your traffic analytics with Matomo – a fully GDPR-compliant product that doesn’t rely on third-party cookies for tracking web visitors. Because of how it is designed, the French data protection authority (CNIL) confirmed that Matomo can be used to collect data without tracking consent.
With Matomo, you can track website users without asking for cookie consent. And when you do, we supply you with a compact, compliant, non-disruptive cookie banner design.
Your Google Tag Isn’t Embedded Correctly
Google Tag (gtag.js) is a web tracking script that sends data to your Google Analytics, Google Ads and Google Marketing Platform.
A corrupted gtag.js installation can create two accuracy issues :
- Duplicate page tracking
- Missing script installation
Is there a way to tell if you’re affected ?
Yes. You may have duplicate scripts installed if you have a very low bounce rate on most website pages (below 15% – 20%). The above can happen if you’re using a WordPress GA plugin and additionally embed gtag.js straight in your website code.
A tell-tale sign of a missing script on some pages is low/no traffic stats. Google alerts you about this with a banner :
Solution : Use Available Troubleshooting Tools
Use Google Analytics Debugger extension to analyse pages with low bounce rates. Use the search bar to locate duplicate code-tracking elements.
Alternatively, you can use Google Tag Assistant for diagnosing snippet install and troubleshooting issues on individual pages.
If the above didn’t work, re-install your analytics script.
Machine Learning and Blended Data Are Applied
Google Analytics 4 (GA4) relies a lot on machine learning and algorithmic predictions.
By applying Google’s advanced machine learning models, the new Analytics can automatically alert you to significant trends in your data. [...] For example, it calculates churn probability so you can more efficiently invest in retaining customers.
On the surface, the above sounds exciting. In practice, Google’s application of predictive algorithms means you’re not seeing actual data.
To offer a variation of cookieless tracking, Google algorithms close the gaps in reporting by creating models (i.e., data-backed predictions) instead of reporting on actual user behaviours. Therefore, your GA4 numbers may not be accurate.
For bigger web properties (think websites with 1+ million users), Google also relies on data sampling — a practice of extrapolating data analytics, based on a data subset, rather than the entire dataset. Once again, this can lead to inconsistencies in reporting with some numbers (e.g., average conversion rates) being inflated or downplayed.
Solution : Try an Alternative Website Analytics App
Unlike GA4, Matomo reports consist of 100% unsampled data. All the aggregated reporting you see is based on real user data (not guesstimation).
Moreover, you can migrate from Universal Analytics (UA) to Matomo without losing access to your historical records. GA4 doesn’t yet have any backward compatibility.
Spam and Bot Traffic Isn’t Filtered Out
Surprise ! 42% of all Internet traffic is generated by bots, of which 27.7% are bad ones.
Good bots (aka crawlers) do essential web “housekeeping” tasks like indexing web pages. Bad bots distribute malware, spam contact forms, hack user accounts and do other nasty stuff.
A lot of such spam bots are designed specifically for web analytics apps. The goal ? Flood your dashboard with bogus data in hopes of getting some return action from your side.
Types of Google Analytics Spam :
- Referral spam. Spambots hijack the referrer, displayed in your GA referral traffic report to indicate a page visit from some random website (which didn’t actually occur).
- Event spam. Bots generate fake events with free language entries enticing you to visit their website.
- Ghost traffic spam. Malicious parties can also inject fake pageviews, containing URLs that they want you to click.
Obviously, such spammy entities distort the real website analytics numbers.
Solution : Set Up Bot/Spam Filters
Google Analytics 4 has automatic filtering of bot traffic enabled for all tracked Web and App properties.
But if you’re using Universal Analytics, you’ll have to manually configure spam filtering. First, create a new view and then set up a custom filter. Program it to exclude :
- Filter Field : Request URI
- Filter Pattern : Bot traffic URL
Once you’ve configured everything, validate the results using Verify this filter feature. Then repeat the process for other fishy URLs, hostnames and IP addresses.
You Don’t Filter Internal Traffic
Your team(s) spend a lot of time on your website — and their sporadic behaviours can impair your traffic counts and other website metrics.
To keep your data “employee-free”, exclude traffic from :
- Your corporate IPs addresses
- Known personal IPs of employees (for remote workers)
If you also have a separate stage version of your website, you should also filter out all traffic coming from it. Your developers, contractors and marketing people spend a lot of time fiddling with your website. This can cause a big discrepancy in average time on page and engagement rates.
Solution : Set Internal Traffic Filters
Google provides instructions for excluding internal traffic from your reports using IPv4/IPv6 address filters.
Session Timeouts After 30 Minutes
After 30 minutes of inactivity, Google Analytics tracking sessions start over. Inactivity means no recorded interaction hits during this time.
Session timeouts can be a problem for some websites as users often pin a tab to check it back later. Because of this, you can count the same user twice or more — and this leads to skewed reporting.
Solution : Programme Custom Timeout Sessions
You can codify custom cookie timeout sessions with the following code snippets :
- _setSessionCookieTimeout. Set a custom new session cookie timeout in milliseconds.
- _setVisitorCookieTimeout. Sets a custom Google Analytics visitor cookie expiration time frame in milliseconds.
Final Thoughts
Thanks to its scale and longevity, Google Analytics has some strong sides, but its data accuracy isn’t 100% perfect.
The inability to capture analytics data from users who don’t consent to cookie tracking and data sampling applied to bigger web properties may be a deal-breaker for your business.
If that’s the case, try Matomo — a GDPR-compliant, accurate web analytics solution. Start your 21-day free trial now. No credit card required.
21 day free trial. No credit card required.
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A Beginner’s Guide to Omnichannel Analytics
14 avril 2024, par ErinLinear customer journeys are as obsolete as dial-up internet and floppy disks. As a marketing manager, you know better than anyone that customers interact with your brand hundreds of times across dozens of channels before purchasing. That can make tracking them a nightmare unless you build an omnichannel analytics solution.
Alas, if only it were that simple.
Unfortunately, it’s not enough to collect data on your customers’ complex journeys just by buying an omnichannel platform. You need to generate actionable insights by using marketing attribution to tie channels to conversions.
This article will explain how to build a useful omnichannel analytics solution that lets you understand and improve the customer journey.
What is omnichannel analytics ?
Omnichannel analytics collects and analyses customer data from every touchpoint and device. The goal is to collect all this omnichannel data in one place, creating a single, real-time, unified view of your customer’s journey.
Unfortunately, most businesses haven’t achieved this yet. As Karen Lellouche Tordjman and Marco Bertini say :
“Despite all the buzz around the concept of omnichannel, most companies still view customer journeys as a linear sequence of standardised touchpoints within a given channel. But the future of customer engagement transforms touchpoints from nodes along a predefined distribution path to full-blown portals that can serve as points of sale or pathways to many other digital and virtual interactions. They link to chatbots, kiosks, robo-advisors, and other tools that customers — especially younger ones — want to engage with.”
However, doing so is more important than ever — especially when consumers have over 300 digital touchpoints, and the average number of touchpoints in the B2B buyer journey is 27.
Not only that, but customers expect personalised experiences across every platform — that’s the kind you can only create when you have access to omnichannel data.
What might omnichannel analytics look like in practice for an e-commerce store ?
An online store would integrate data from channels like its website, mobile app, social media accounts, Google Ads and customer service records. This would show how customers find its brand, how they use each channel to interact with it and which channels convert the most customers.
This would allow the e-commerce store to tailor marketing channels to customers’ needs. For instance, they could focus social media use on product discovery and customer support. Google Ads campaigns could target the best-converting products. While all this is happening, the store could also ensure every channel looks the same and delivers the same experience.
What are the benefits of omnichannel analytics ?
Why go to all the trouble of creating a comprehensive view of the customer’s experience ? Because you stand to gain some pretty significant benefits when implementing omnichannel analytics.
Understand the customer journey
You want to understand how your customers behave, right ? No other method will allow you to fully understand your customer journey the way omnichannel analytics does.
It doesn’t matter how customers engage with your brand — whether that’s your website, app, social media profiles or physical stores — omnichannel analytics capture every interaction.
With this 360-degree view of your customers, it’s easy to understand how they move between channels, where they encounter issues and what bottlenecks prevent them from converting.
Deliver better personalisation
We don’t have to tell you that personalisation matters. But do you know just how important it is ? Since 56% of customers will become repeat buyers after a personalised experience, delivering them as often as possible is critical.
Omnichannel analytics helps in your quest for personalisation by highlighting the individual preferences of customer segments. For example, e-commerce stores can use omnichannel analytics to understand how shoppers behave across different devices and tailor their offers accordingly.
Upgrade the customer experience
Omnichannel analytics gives you the insights to improve every aspect of the customer experience.
For starters, you can ensure a consistent brand experience across all your top channels by making sure they look and behave the same.
Then, you can use omnichannel insights to tailor each channel to your customers’ requirements. For example, most people interacting with your brand on social media may seek support. Knowing that you can create dedicated support accounts to assist users.
Improve marketing campaigns
Which marketing campaigns or traffic sources convert the most customers ? How can you improve these campaigns ? Omnichannel analytics has the answers.
When you implement omnichannel analytics you automatically track the performance of every marketing channel by attributing each conversion to one or more traffic sources. This lets you see whether Google Ads bring in more customers than your SEO efforts. Or whether social media ads are the most profitable acquisition channel.
Armed with this information, you can improve your marketing efforts — either by focusing on your profitable channels or rectifying problems that stop less profitable channels from converting.
What are the challenges of omnichannel analytics ?
There are three challenges when implementing an omnichannel analytics solution :
- Complex customer journeys : Customer journeys aren’t linear and can be incredibly difficult to track.
- Regulatory and privacy issues : When you start gathering customer data, you quickly come up against consumer privacy laws.
- No underlying goal : There has to be a reason to go to all this effort, but brands don’t always have goals in mind before they start.
You can’t do anything about the first challenge.
After all, your customer journey will almost never be linear. And isn’t the point of implementing an omnichannel solution to understand these complex journeys in the first place ? Once you set up omnichannel analytics, these journeys will be much easier to decipher.
As for the other two :
Using the right software that respects user privacy and complies with all major privacy laws will avoid regulatory issues. Take Matomo, for instance. Our software was designed with privacy in mind and is configured to follow the strictest privacy laws, such as GDPR.
Tying omnichannel analytics to marketing attribution will solve the final challenge by giving your omnichannel efforts a goal. When you tie omnichannel analytics to your marketing efforts, you aren’t just getting a 360-degree view of your customer journey for the sake of it. You are getting that view to improve your marketing efforts and increase sales.
Try Matomo for Free
Get the web insights you need, without compromising data accuracy.
How to set up an omnichannel analytics solution
Want to set up a seamless analytical environment that incorporates data from every possible source ? Follow these five steps :
Choose one or more analytics providers
You can use several tools to build an omnichannel analytics solution. These include web and app analytics tools, customer data platforms that centralise first-party data and business intelligence tools (typically used for visualisation).
Which tools you use will depend on your goals and your budget — the loftier your ambitions and the higher your budget, the more tools you can use.
Ideally, you should use as few tools as possible to capture your data. Most teams won’t need business intelligence platforms, for example. However, you may or may not need both an analytics platform and a customer data platform. Your decision will depend on how many channels your customers use and how well your analytics tool tracks everything.
If it can capture web and app usage while integrating with third-party platforms like your back-end e-commerce platform, then it’s probably enough.
Collect accurate data at every touchpoint
Your omnichannel analytics efforts hinge on the quantity and quality of data you can collect. You want to gather data from every touchpoint possible and store that data in as few places as possible. That’s why choosing as few tools as possible in the step above is so important.
So, where should you start ? Common data sources include :
- Your website
- Apps (iOS and Android)
- Social media profiles
- ERPs
- PoS systems
At the same time, make sure you’re tracking all relevant metrics. Revenue, customer engagement and conversion-focused metrics like conversion rate, dwell time, cart abandonment rate and churn rate are particularly important.
Set up marketing attribution
Setting up marketing attribution (also known as multi-touch attribution) is essential to tie omnichannel data to business goals. It’s the only way to know exactly how valuable each marketing channel is and where each customer comes from.
You’ll want to use multi-touch attribution, given you have data from across the customer journey.
Multi-touch attribution models can include (but are not limited to) :
- Linear : where each touchpoint is given equal weighting
- Time decay : where touchpoints are more valuable the nearer they are to conversion
- Position-based : where the first and last touch points are more valuable than all the others.
You don’t have to use just one of the models above, however. One of the benefits of using a web analytics tool like Matomo is that you can choose between different attribution models and compare them.
Try Matomo for Free
Get the web insights you need, without compromising data accuracy.
Create reports that help you visualise data
Dashboards are your friend here. They’ll let you see KPIs at a glance, allowing you to keep track of day-to-day changes in your customer journey. Ideally, you’ll want a platform that lets you customise dashboard widgets so only relevant KPIs are shown.
Setting up standard and custom reports is also important. Custom reports allow you to choose metrics and dimensions that align with your goals. They will also allow you to present your data most meaningfully to your team, increasing the likelihood they act upon insights.
Analyse data and take action
Now that you have customer journey data at your fingertips, it’s time to analyse it. After all, there’s no point in implementing an omnichannel analytics solution if you aren’t going to take action.
If you’re unsure where to start, re-read the benefits we listed at the start of this article. You could use your omnichannel insights to improve your marketing campaigns by doubling down on the channels that bring in the best customers.
Or you could identify (and fix) bottlenecks in the customer journey so customers are less likely to fall out of your funnel between certain channels.
Just make sure you take action based on your data alone.
Make the most of omnichannel analytics with Matomo
A comprehensive web and app analytics platform is vital to any omnichannel analytics strategy.
But not just any solution will do. When privacy regulations impede an omnichannel analytics solution, you need a platform to capture accurate data without breaking privacy laws or your users’ trust.
That’s where Matomo comes in. Our privacy-friendly web analytics platform ensures accurate tracking of web traffic while keeping you compliant with even the strictest regulations. Moreover, our range of APIs and SDKs makes it easy to track interactions from all your digital products (website, apps, e-commerce back-ends, etc.) in one place.
Try Matomo for free for 21 days. No credit card required.
Try Matomo for Free
21 day free trial. No credit card required.