March 2010 April 2010 May 2010 June 2010 July 2010
August 2010
September 2010 October 2010
November 2010
December 2010 January 2011 February 2011 March 2011 April 2011 May 2011 June 2011 July 2011 August 2011 September 2011 October 2011 November 2011 December 2011 January 2012 February 2012 March 2012 April 2012 May 2012 June 2012 July 2012 August 2012 September 2012 October 2012 November 2012 December 2012 January 2013 February 2013 March 2013 April 2013 May 2013 June 2013 July 2013 August 2013 September 2013 October 2013 November 2013 December 2013 January 2014 February 2014 March 2014 April 2014 May 2014 June 2014 July 2014 August 2014 September 2014 October 2014 November 2014 December 2014 January 2015 February 2015 March 2015 April 2015 May 2015 June 2015 July 2015 August 2015 September 2015 October 2015 November 2015 December 2015 January 2016 February 2016 March 2016 April 2016 May 2016 June 2016 July 2016 August 2016 September 2016 October 2016 November 2016 December 2016 January 2017 February 2017 March 2017 April 2017 May 2017 June 2017 July 2017 August 2017 September 2017 October 2017 November 2017 December 2017 January 2018 February 2018 March 2018 April 2018 May 2018 June 2018 July 2018 August 2018 September 2018 October 2018 November 2018 December 2018 January 2019 February 2019 March 2019 April 2019 May 2019 June 2019 July 2019 August 2019 September 2019 October 2019 November 2019 December 2019 January 2020 February 2020 March 2020 April 2020 May 2020 June 2020 July 2020 August 2020 September 2020 October 2020 November 2020 December 2020 January 2021 February 2021 March 2021 April 2021 May 2021 June 2021 July 2021 August 2021 September 2021 October 2021 November 2021 December 2021 January 2022 February 2022 March 2022 April 2022 May 2022 June 2022 July 2022 August 2022 September 2022 October 2022 November 2022 December 2022 January 2023 February 2023 March 2023 April 2023 May 2023 June 2023 July 2023 August 2023 September 2023 October 2023 November 2023 December 2023 January 2024 February 2024 March 2024 April 2024 May 2024 June 2024 July 2024 August 2024 September 2024
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25
26
27
28
29
30
News Every Day |

How causal impact studies work and when to use them in PPC

We’re constantly seeking ways to optimize our PPC campaigns and maximize impact.

Testing is critical to this process, but traditional methods like A/B tests, incrementality evaluations and geo experiments often have significant limitations.

Large data requirements, extensive planning and reliance on ad platform functionality can make it challenging to get clear, reliable insights.

When these constraints come into play, we may find ourselves making important decisions based on incomplete or misleading data – wasting budget or missing out on scaling opportunities.

This article explores a powerful but often overlooked testing technique: causal impact studies. Discover how they work, when to use them and how they can transform your approach to optimization and decision-making.

What are causal impact studies?

Causal impact studies accurately measure the true effects of changes in your campaigns by estimating a counterfactual (i.e., What would have happened without the implemented change?). 

Understanding the difference between correlation and causation is crucial.

For example, if the number of Aperol Spritzes I drink in summer increases alongside my complaints about the heat, one isn’t causing the other; both are influenced by the sun being out more.

Causal impact studies help you determine whether a change in your paid media campaigns directly caused a shift in a specific KPI or if that shift would have occurred anyway. 

The study takes a set of observed data and estimates this counterfactual scenario – essentially asking what would have happened without the change.

The difference between this counterfactual data and the observed data reveals the causal effect of your intervention.

Dig deeper: 3 steps for effective PPC reporting and analysis

How do they work?

In an A/B test, two groups of users are involved: one exposed to a test condition and the other under control conditions.

You can observe the outcomes for both groups – what happens with the test condition and what happens without any changes.

However, you cannot see the outcome for the test group if no changes had been made, nor can you determine how the control group would have performed if the test condition had been applied.

In a causal impact study, the goal is to estimate the outcome for the test group if no changes were made (in this diagram, test group 2):

To build this estimate, you need to find another data set from the same time period that is correlated with your KPI but not affected by the campaign change. This could be data from a similar campaign that wasn’t impacted by the test or something broader like brand searches or overall category demand.

When you run the model on these two data sets – your observed data and the correlated data set – it will first examine the relationship between them. Then, it will estimate what would have happened to the observed data if it had followed that relationship beyond the point of implementation.

If this estimate matches your observed data, it indicates that your change had no impact. However, if the estimate shows significantly different results, you can identify a meaningful causal effect.

The study runs many iterations of the model to generate a distribution of estimated results from which a confidence interval can be built. 

To validate your results, you could always go back to your A/B tests.

If you run an A/B test using the same test conditions, does your control group come out with the same data trend as your counterfactual estimate? If so, then you can confidently say that your model is accurate.

Full information and implementation guides on the package created by Kay H. Brodersen and Alain Hauser can be found on GitHub. I also highly recommend watching Brodersen’s talk on the subject on YouTube.

Dig deeper: Advanced analytics techniques to measure PPC

Get the newsletter search marketers rely on.


When to use causal impact studies

When is it appropriate to use a causal impact study? To answer this, consider the following pros and cons.

Pros

  • Clear understanding: You can gain a clear insight into the impact of a specific change.
  • Flexibility: There is flexibility in the test setup, and you have control over confounding variables, such as seasonality, as long as you choose the right data set for comparison.
  • Retrospective analysis: These tests can be conducted in retrospect. If an A/B test was not possible or wasn’t implemented, you can still analyze a past change to determine whether it had an impact or if other factors influenced the results.

Cons

  • Technical expertise required: Implementing the test requires a certain degree of technical know-how. While I have support from my team at Google and my data solutions team, not everyone has that luxury.
  • Resource intensive: If a hypothesis can be adequately answered using an A/B test, that approach is generally easier to implement and less resource-heavy.
  • Data dependency: The strength of the model heavily depends on the data set you use to train it. If you select a data set that does not closely relate to your test KPI, your model may not be accurate, leading to unmeaningful results.

If you have the technical ability (or the willingness to learn), an appropriate data set for comparison, and your hypothesis cannot be answered by a simpler test like A/B, then a causal impact study is a valuable tool to accurately determine the true impact of an intervention.

For example, my team is currently running two analyses for a client: one where we turned off their GDN activity and reallocated that budget to Demand Generation and another in which we’re testing the impact of adding assets back into a feed-only Performance Max campaign. The causal impact studies will help us determine whether these changes significantly affected our overall Google Ads performance.

My next test?

Validating whether my Aperol Spritz intake is caused by the sun being out more or whether it has something to do with the increasing length of my to-do list!

Measuring true campaign effectiveness with causal impact studies

Causal impact studies are a powerful tool for paid media marketers seeking to understand the true effects of their campaign changes.

By accurately estimating counterfactual scenarios, these studies help you discern whether observed outcomes result from your actions or other factors. 

While they require some technical expertise and careful data selection, their ability to provide clear insights makes them invaluable for optimizing marketing strategies. 

Embracing causal impact studies can lead to more informed decisions and ultimately improve the effectiveness of your campaigns.

Dig deeper: How to evolve your PPC measurement strategy for a privacy-first future

News Every Day

Los Alamitos horse racing consensus picks for Saturday, September 21, 2024

Mum leaves people raging over VERY unique baby moniker, as they remind her she’s ‘naming kids, not Hungry Hippos’

Los Alamitos horse racing consensus picks for Saturday, September 21, 2024

Elle King shares major life update after opening up about 'toxic' relationship with dad Rob Schneider

Morning Briefing: Mets Keep Ground in Wild Card Race Despite Loss

Ria.city






Read also

Dr. Sex and the Anarchist Sex Cookbook

'I'm going to kill him': Man named Crazybull charged with death threats against Trump

Figuring Out a Playoff Bench This Week

News, articles, comments, with a minute-by-minute update, now on Today24.pro

News Every Day

Mum leaves people raging over VERY unique baby moniker, as they remind her she’s ‘naming kids, not Hungry Hippos’

Today24.pro — latest news 24/7. You can add your news instantly now — here


News Every Day

Eddie Hearn threatens to ‘knock out’ rival promoter in bizarre confrontation on stage at Joshua vs Dubois face-offs



Sports today


Новости тенниса
Даниил Медведев

Даниил Медведев в составе сборной Европы стал обладателем Кубка Лэйвера



Спорт в России и мире
Москва

На матче "ЦСКА-Динамо" родилась новая семья



All sports news today





Sports in Russia today

Москва

На матче "ЦСКА-Динамо" родилась новая семья


Новости России

Game News

Cards Against Humanity sues Elon Musk for $15M, alleges that SpaceX invaded a plot of land it owns in Texas: 'Go **** yourself, Elon Musk'


Russian.city


Москва

«Спартак» интересовался защитником сборной Аргентины U23 Лукасом Эскивелем


Губернаторы России
PR time

Лучшие саундтреки из фильмов про космос прозвучат в исполнении Симфонического оркестра «Северо- Запад»


Суд в Москве арестовал водителя после ДТП с тремя погибшими

Бутик-отели «Де Арт 13» – уют и дизайн в сердце Москвы

В Подмосковье сотрудники Росгвардии задержали подозреваемого в убийстве

Плата за знание. Эксперт рассказал, как выучить иностранный и сэкономить


Дистрибьюция Музыки. Дистрибьюция Музыки в России. Дистрибьюция музыки в вк. Яндекс музыка дистрибьюция. Цифровая дистрибьюция музыка. Дистрибьюция музыки под ключ.

Comedy Club вернулся с 20-м сезоном после шутки о закрытии

Суд взыскал 90 тысяч рублей с Киркорова по иску Успенской

Парашютист из Казани сделал Бузовой экстремальное предложение в воздухе


Кондитерская империя и роман с другом принца Гарри: как сейчас живет первая ракетка мира Мария Шарапова

Касаткина проиграла Хаддад-Майе в финале турнира WTA 500 в Сеуле

Дарья Касаткина проиграла четвёртый финал WTA в текущем сезоне

Вероника Кудерметова победила Викторию Томову и пробилась в полуфинал WTA-500 в Сеуле



Арендаторы квартир в Челябинске живут на прожиточный минимум

Обзор известных приложений, созданных на iOS

На матче "ЦСКА-Динамо" родилась новая семья

На матче "ЦСКА-Динамо" родилась новая семья


Суд арестовал имущество КЭМЗ по делу о хищении при строительстве «Газпром Арена»

Похороны погибших в Москве охранников Wildberries прошли в Ингушетии

Бастрыкину доложат о ходе проверки действий мигранта, пристающего к москвичкам

Титулы Самсоновой и Хромачёвой, неудача Касаткиной и прорыв Качмазова: как российские теннисисты проводят турниры в Азии


Более 100 новых лавочек установили в парке Толстого в Химках

В округе Шаховская реализован на торгах самый бюджетный участок за неделю

От салатов до десертов. Анатолийский булгур обогащает российский стол

Педагог из Ярославской области стала кандидатом на звание "Учитель года России - 2024"



Путин в России и мире






Персональные новости Russian.city
Филипп Киркоров

Суд взыскал 90 тысяч рублей с Киркорова по иску Успенской



News Every Day

Elle King shares major life update after opening up about 'toxic' relationship with dad Rob Schneider




Friends of Today24

Музыкальные новости

Персональные новости