100% tevredenheidsgarantie Direct beschikbaar na je betaling Lees online óf als PDF Geen vaste maandelijkse kosten 4.2 TrustPilot
logo-home
Samenvatting

Complete Summary Social Media and Web Analytics 2024/2025 - Tilburg University - MSc Marketing Analytics - Including lecture notes and mandatory articles

Beoordeling
-
Verkocht
-
Pagina's
87
Geüpload op
03-06-2025
Geschreven in
2024/2025

Complete summary of the course material for social media and web analytics, course of the MSc marketing analytics at tilburg university. The summary includes all lectures (+ notes), all mandatory articles and online book chapters, and useful parts of the lab sessions

Meer zien Lees minder











Oeps! We kunnen je document nu niet laden. Probeer het nog eens of neem contact op met support.

Documentinformatie

Geüpload op
3 juni 2025
Aantal pagina's
87
Geschreven in
2024/2025
Type
Samenvatting

Voorbeeld van de inhoud

SOCIAL MEDIA AND WEB ANALYTICS

Table of Contents
WEEK 1 ......................................................................................................................... 3
Lecture 1 – Course Introduction............................................................................................3
Lecture 2 – The Design of Empirical Research .......................................................................4
The E ect – Chapter 1, 2, and 5 .......................................................................................... 12
Intrinsic vs. Image-Related Utility in Social Media: Why Do People Contribute Content to
Twitter? – Toubia & Stephen ................................................................................................ 14
WEEK 2 ....................................................................................................................... 15
Lecture 3 – Causation & Randomized Experiments .............................................................. 15
Put Your Mouth Where Your Money Is: A Field Experiment Encouraging Donors to Share About
Charity – Silver & Small ...................................................................................................... 26
Randomization and Causality ............................................................................................. 26
Lab Regression .................................................................................................................. 28
WEEK 3 ....................................................................................................................... 30
Lecture 4 – A/B Tests: The Essentials ................................................................................... 30
Lab Identification ............................................................................................................... 38
Statistical Challenges in Online Controlled Experiments: A Review of A/B Testing Methodology
– Larsen et al. .................................................................................................................... 40
The surprising power of online experiments – HBR............................................................... 40
Online Experimentation: Benefits, Operational and Methodological Challenges, and Scaling
Guide – Bojinov & Gupta ..................................................................................................... 41
The A/B Test: Inside the Technology That's Changing the Rules of Business .......................... 41
WEEK 4 ....................................................................................................................... 42
Lecture 5 – A/B Testing: Next Steps ..................................................................................... 42
Improving the Sensitivity of Online Controlled Experiments by Utilizing Pre-Experiment Data –
Deng et al. ......................................................................................................................... 52
The E ect – Your standard errors are probably wrong ........................................................... 53
WEEK 5 ....................................................................................................................... 54
Lecture 6 – Di erences in Di erences................................................................................. 54
The E ect – Chapter 17 Event Studies ................................................................................. 62
The E ect – Chapter 18 Di erence-in-Di erences ............................................................... 63
WEEK 6 ....................................................................................................................... 64
Lecture 7 – Di in Di : Applications .................................................................................... 64
Consumer heterogeneity and paid search e ectiveness: A large-scale field experiment – Blake
et al. .................................................................................................................................. 81



1

, Does Online Word-of-Mouth Increase Demand? (and How?) Evidence from a Natural
Experiment – Seiler et al. .................................................................................................... 81
WEEK 7 ....................................................................................................................... 82
Lecture 8 – Intro to Text Analytics ........................................................................................ 82
Text Mining with R – Chapter 1 ............................................................................................ 83
Text Mining with R – Chapter 2 ............................................................................................ 83
Text Mining with R – Chapter 3 ............................................................................................ 84
Lecture 9 – Sentiment Analysis ........................................................................................... 85
VADER: A Parsimonious Rule-based Model for Sentiment Analysis of Social Media Text ........ 85
WEEK 8 ....................................................................................................................... 86
Text Mining with R – Chapter 6 ............................................................................................ 86




2

,WEEK 1

Lecture 1 – Course Introduction

What is marketing analytics?

Marketing analytics is the practice of collecting and analysing consumer and firm data to
optimize a firm’s marketing e ectiveness and improve business/marketing decisions.

- A young field with fast progress:
o Since the 1970s: conjoint analysis
o Since the 1990s: structural models
o In the last decade: rise of modern causal inference
- The number of methods is increasing fast
- Most important methods originate outside the discipline of marketing
o Near the applications, the substance, the problem to be solved
o From adjacent fields: economics, statistics, psychology, data science, political
science

Marketing analytics is an unusually diverse discipline, cross-roads of other fields, great place for
a broad perspective on methods.

What is the subfield of digital marketing analytics?

- Digital marketing analytics ↔ social media and web analytics
o Applying marketing analytics to the online world
 Websites, online advertising, retail platforms, social media
- Quickly becoming one of the largest fields within marketing
o Lots of data
o Increasingly the main place where consumers and firms interact

What kind of empirical analyses are of interest to us as marketers?

- Descriptive analysis
- Causal analysis
- Predictive analysis

Descriptive analysis: summarise characteristics of a dataset

- What does the data look like?
o Means, standard deviations, distribution of data
o Results are (stylized) facts
- Examples:
o How are users who discuss the US election connected on Twitter?
o What topics are discussed on Yelp reviews?
o Are discussions on Reddit about Albert Heijn di erent from those on Twitter?

Causal analysis: does A lead to B?

- Might also care about the mechanism of how it happens
- Examples:
o Do Facebook ads increase product purchases?
o Does product adoption by influencers increase demand?
o Do tweets by TV studios increase the number of viewers of their show?

3

, Predictive analysis: how can I best predict an outcome?

- When A occurs, so does B
- Examples:
o Is this review posted by a real person or by a bot?
o How many retweets does Nike expect its next tweet to get?
o Who is a new Twitter user likely to follow?

Social media & web analytics needs to combine tools from multiple areas:

1. Statistical/econometric methods
2. Text analytics – text-as-data
3. Network analytics
4. Machine learning

The exact mix of these used in any project depends on:

- The question you want to answer
o Example: can one deliver valuable insight by ignoring the network structure?
- Personal taste

High quality social media & web analytics is incredibly useful

Why?

- Impacts a wide variety of industries
o Media & entertainment, politics, health care, FMCG, fashion & beauty, etc.
- It provides real answers to real problems in marketing and business strategy
o And people care about the answers

Lecture 2 – The Design of Empirical Research

How does the world work?

- We’ll never know everything perfectly
- There’s always scope for new research
- We’ll need to be comfortable with simplifications

A good research question is:

1. Well-defined
2. Answerable
3. Understandable to the audience that you need to deliver it to - context-specific. E.g.,
“how does price of yoghurt influence quantity bought?” should be framed di erently
when the audience is a group of academics (talk about price elasticity etc.) vs. a group of
managers from Danone (talk about how demand changes).

Our goal: conduct research in a way that’s capable of answering the questions we asked

The focus of this class: quantitative empirical research

Empirical research:

- Uses (structured) observations from the real world to attempt to answer questions

Quantitative:

4

Maak kennis met de verkoper

Seller avatar
De reputatie van een verkoper is gebaseerd op het aantal documenten dat iemand tegen betaling verkocht heeft en de beoordelingen die voor die items ontvangen zijn. Er zijn drie niveau’s te onderscheiden: brons, zilver en goud. Hoe beter de reputatie, hoe meer de kwaliteit van zijn of haar werk te vertrouwen is.
BAstudent1 Tilburg University
Bekijk profiel
Volgen Je moet ingelogd zijn om studenten of vakken te kunnen volgen
Verkocht
47
Lid sinds
2 jaar
Aantal volgers
21
Documenten
15
Laatst verkocht
2 dagen geleden
BAstudent

3,8

4 beoordelingen

5
2
4
0
3
1
2
1
1
0

Recent door jou bekeken

Waarom studenten kiezen voor Stuvia

Gemaakt door medestudenten, geverifieerd door reviews

Kwaliteit die je kunt vertrouwen: geschreven door studenten die slaagden en beoordeeld door anderen die dit document gebruikten.

Niet tevreden? Kies een ander document

Geen zorgen! Je kunt voor hetzelfde geld direct een ander document kiezen dat beter past bij wat je zoekt.

Betaal zoals je wilt, start meteen met leren

Geen abonnement, geen verplichtingen. Betaal zoals je gewend bent via iDeal of creditcard en download je PDF-document meteen.

Student with book image

“Gekocht, gedownload en geslaagd. Zo makkelijk kan het dus zijn.”

Alisha Student

Veelgestelde vragen