Marketing Analytics

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Marketing analytics is the practice of using data to evaluate the effectiveness of marketing activities. By collecting, analyzing, and interpreting data, marketers can gain insights into customer behavior, identify trends, and optimize their marketing campaigns. This can lead to improved ROI, increased brand awareness, and higher customer satisfaction.

During this part of the Grow With Google Digital Marketing and E-Commerce Certificate, I will be creating several of the elements that compose marketing analytics as part of my coursework.

In this exercise, the company’s goals are to increase annual sales by 10% over the previous year, as well as to sell new products on the company’s website. Running email and social media campaigns is necessary to increase website traffic and conversions, as measured by click-through rate (CTR) and conversion rate (CVR). This is the documentation needed to understand what the performance goals will be.

Business Goal:

  • Increase annual revenue by 10% over 2020 by the end of Q4.

Marketing Goals for Q4:

  • Increase the combined CVR from all marketing channels by 2% (two percentage points) above the CVR in Q3.
  • Increase the combined CTR from all marketing channels by 5% (five percentage points) above the CTR in Q3.

Media ChannelKPIsIndustry BenchmarksQ3 PerformanceQ4 Performance Goals
EmailCVR8.3%7.5%Increase the conversion rate to 8.7%
CTR2%1.5%Increase the click-through rate to 2.3%
Social MediaCVR4%3.33%Increase the conversion rate to 4.1%
CTR1.1%1%Increase the click-through rate to 1.6%
Please note benchmarks are fictitious and precise benchmarks should be discussed depending on the industry.

For this section I used the Google Merchandise Store demo account, which is a Google Analytics 4 account, to look at acquisition, engagement, and monetization metrics. You can access the demo account and play with it yourself by clicking here.

Search EngineTotal new users
59,163
Number of new users per search enginePercent of new users:
Number of new users / Total new users x 100
Google25,73643%
Bing1480.25%
Yahoo2830.47%
Baidu1,8553.13%
For this project, I used the dates from July 1, 2023 to July 31, 2023

In researching further, we can notice that Bing had the highest average engagement time among search engines at 1 minute and 31 seconds. Baidu had the highest engagement rate at 86.94%.

Google Analytics collects the metrics for Baidu searches from mobile users. There were 117 new users from the mobile source, m.baidu.com.

For this part of the exercise, I have to look at the following metrics:

  • sessions_start
  • add_to_cart
  • begin_checkout
  • remove_from_cart
  • purchase

I will also calculate the number of users with cart abandonment and the percentage of users with cart reduction.

EventTotal users
sessions_start92,395
add_to_cart19,774
begin_checkout4,882
remove_from_cart1,482
purchase1,421

Number of users with cart abandonment: 4,882 – 1421 = 3,461
Sales conversion rate: (1,421 / 92,395) x 100 = 1.54%

For this portion of the project, I will include total revenue, the number of first-time buyers, and the three top-selling products:

Total RevenueNumber of First Time Purchases#1 Item Sold#2 Item Sold#3 Item Sold
143,0001,100Google Ombre Lime PenGoogle Inspired Green NotebookGoogle Pen Red


In this part of the project, I will estimate the ROI by calculating the ROAS and the LTV. To look at the data, you can click here.

ExpressionCampaign ROASROAS for search adsROAS for display adsROAS for social adROAS for shopping ads
Number2.011.711.764.673.55
Percentage201%171%176%467%355%
Ratio2:01:11.71:11.76:14.67:13.55:1
Formula: ROAS = Revenue/Ad spend

Campaign AOVAOV for search adsAOV for display adsAOV for social adsAOV for shopping ads
$80.55$128.69$27.61$87.41$61.00
Formula: AOV = Revenue/Number of orders

Campaign  LTVLTV for  search adLTV for display adsLTV for social adsLTV for shopping ads
$128.88$193.04$55.22$131.12$91.50
Formula: LTV =Average order value (AOV) x Purchase frequency

Campaign  LTV:CACSearch ads
LTV:CAC
Display ads
LTV:CAC
Social ads
LTV:CAC
Shopping ads
LTV:CAC
1.981.721.784.683.66
Formula: LTV to CAC ratio = LTV/CAC

Campaign 
percentage
Search ads
percentage
Display ads
percentage
Social ads
percentage
Shopping ads
percentage
18.37%19.75%17.53%13.51%23.16%
Formula: Percentage of new customers making purchases =
(Number of unique new account purchasers / Number of new accounts) x 100

Based on the ROAS calculations, we should move some of the budget from search ads to social or shopping ads, as they have a higher ROAS of 467% and 355%, respectively. In contrast, search ads have a ROAS of 171%.

If there is only enough budget to create a custom landing page for one channel, prioritize social ads. Here is the decision process:

  • We only need to consider search, social, and shopping ads since display ads already have the highest purchase frequency of 2.
  • We narrowed it down to search and social ads since the percentage of new customers who made purchases from shopping ads (23.16%) is higher than the percentages for search (19.75%) and social (13.51%).
  • We chose social ads because the percentage of new customers who made purchases from social ads (13.51%) is lower than the percentage for search ads (19.75%).

An A/B test is a two-group online experimentation method that randomly assigns 50% of users to each group to see which one performs better. To design an A/B test, it is important to have a plan that specifies the key details, such as the descriptions of the variants, their current and expected performance, and the essential metrics that will be used to measure the success of the test. To create this test, we will be using the same metrics found here.

Updated headline for Google Ads campaign | Author: Digital marketer |  Last Updated: July 6

Test ID:7815
Overview:Stay Hotel is running an A/B test to see if a deals-focused headline will improve their Google Ads results.
Asset type:Direct response ad
Channel:Google Ads
Duration:30 days
Test launch date:July 17
Users per variant:3,000
Primary metric:Conversion rate
Current conversion rate:2%
Expected conversion rate:7% (a five percentage point increase)
Confidence level:+95% (Minimum 95%)
Hypothesis:We expect that using a deals-focused headline will increase our conversion rate to 7%, as our target audience is made up of deal seekers.

Variant A (Original):

Variant B (Revised):

We have made suggestions on how to adjust the campaign strategy before presenting the information to L’Acier. It is important to create graphics to help stakeholders understand the information. Here are the visualizations created for the presentation that will be shown to L’Acier:

Total sessions by hour of day

Total conversions by hour of day

Average conversion rates by hour of day

Monday-Wednesday conversion rates by hour of day

Average conversion rates by day of week

After analyzing the campaign strategy and making suggestions for adjustments, we created visualizations for the presentation. We will now present the data and recommendations to the digital marketing leaders. There will also be C-level stakeholders in this meeting, so we will have limited time to present the information. A general summary that addresses their interests and concerns will be sufficient.

The two main questions that need to be answered are:

  • What changes do you recommend making and why?
  • How will your recommendations benefit our department or company?

This is the presentation that explains the adjustments, data, and recommendations that will be discussed in the meeting.

Analytics-EN

Marketing analytics is a complex and ever-evolving field. However, by understanding the basics and using the right tools, you can gain valuable insights that can help you improve your marketing campaigns and achieve your business goals.

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