100% de satisfacción garantizada Inmediatamente disponible después del pago Tanto en línea como en PDF No estas atado a nada 4,6 TrustPilot
logo-home
Resumen

Complete Summary of Customer Analytics

Puntuación
-
Vendido
4
Páginas
30
Subido en
08-03-2023
Escrito en
2020/2021

Complete summary of the course Customer Analytics, including notes from lectures and tutorials and examples (in italics)

Institución
Grado










Ups! No podemos cargar tu documento ahora. Inténtalo de nuevo o contacta con soporte.

Escuela, estudio y materia

Institución
Estudio
Grado

Información del documento

Subido en
8 de marzo de 2023
Número de páginas
30
Escrito en
2020/2021
Tipo
Resumen

Temas

Vista previa del contenido

Lecture 1 - Uncertainty
Customers are assets that generate profits over time. Marketing used to be product-centric and
transaction-focused, and is now customer-centric and relationship-focused.

Customer lifecycle:
1. Customer acquisition: how customers are born / first contact with the firm
2. Customer development: change in behavior over time; buying more (upselling) or different
things (cross-selling)
3. Customer retention: preventing customer death or churn

Testing
Testing: obtaining more information before committing a large amount of resources, and (hence)
reducing the risk of possible failure
1. Randomly select some customers (test sample) (size = n)
2. Send these customers a mailing, and collect and analyze responses
3. Use results to decide whether to send to the rest of the population ( rollout sample) (size =
N - n)

Sample should be representative for people outside of the sample (randomized sampling).

Test results
→ Assume a test sample of size 5000; thus, randomly selecting 5000 customers and sending them the
mailing
→ Results of test mailing
→ 175 out of 5000 respond; estimated response rate: p̂ =
→ Margin/profit per response is €50 (assume): m = 50
→ Should the rollout be done? How much profit is expected if it is sent to the rest (rollout sample)?

E(rollout profit) = (N - n)(m * p̂ - c)
→ (N - n): number of customers
→ (m * p̂ - c): profit per customer
→ m: margin (profit) per response
→ p̂ : estimate of response rate
→ c: cost of marketing
→ Only roll out when E(rollout profit) > 0 (thus, p̂ > c/m)

Option Value
When the expected rollout profit is positive, it is rolled out to the rest of the sample.
Roll out when: E(rollout profit) > 0 (p̂ > c / m)
→ Bad campaigns are only tested, good campaigns are tested and rolled out (when profit per customer is
positive = p̂*m*c)

, 1. Assume perfect information
2. Test predicts
→ Success (p = 0.05); m * p - c = 1.00
→ Failure (p = 0.01); m * p - c = -1.00
3. Success occurs 30% of the time

Limiting losses to the test means only losing €5000
No-test option = €0
Test = €11,500 (if cost of running the test would be
lower, you wouldn’t do it)


Uncertainty
p: true unobserved population response rate
Sample mean estimate: (what we observe)


Standard error:


Central limit theorem: for a large enough sample, distribution of the sample mean is approximately
normal



Probability of a mistake:




Bootstraps
Bootstrap: sample with replacement from the original sample, using the same sample size (imaging
what other samples would give you)
→ b = 1 gives you B bootstrap samples (some are sampled often, some aren’t at all)
1. Resample with replacement


2. Calculate estimate using this
resample set

, → You now have a distribution




Test whether the estimated




Where



Alfa = response rate < breakeven (type I error; rollout while
you shouldn’t)


Instead of using this “all or nothing” approach, we can also use the test to identify profitable groups
and target mailing to them (test sample, targeted rollout sample (sent), untargeted rollout sample
(not sent)).

Data to use:
Most common
1. Demographics (gender, ethnicity, age, income, family size, occupation, marital status,
education, homeowner/renter, length of residence)
2. Transaction data (past purchases, amounts, dates, discounts)
Best, but unavailable for prospects
3. Marketing (past mailings, content mailings, date, costs)
4. Survey data (psychographics, attitudes, interests, activities)

Even if the untargeted mailing campaign would be profitable, selecting customers usually is more
profitable.

Thus, testing resolves (some, usually not all) uncertainty about the benefit of marketing. Testing
gives the option to rollout if test results are positive, and is even more valuable when you use it to
target better.
5.
$8.49
Accede al documento completo:

100% de satisfacción garantizada
Inmediatamente disponible después del pago
Tanto en línea como en PDF
No estas atado a nada

Conoce al vendedor

Seller avatar
Los indicadores de reputación están sujetos a la cantidad de artículos vendidos por una tarifa y las reseñas que ha recibido por esos documentos. Hay tres niveles: Bronce, Plata y Oro. Cuanto mayor reputación, más podrás confiar en la calidad del trabajo del vendedor.
sachalena Tilburg University
Seguir Necesitas iniciar sesión para seguir a otros usuarios o asignaturas
Vendido
18
Miembro desde
5 año
Número de seguidores
14
Documentos
8
Última venta
1 año hace

1.0

1 reseñas

5
0
4
0
3
0
2
0
1
1

Recientemente visto por ti

Por qué los estudiantes eligen Stuvia

Creado por compañeros estudiantes, verificado por reseñas

Calidad en la que puedes confiar: escrito por estudiantes que aprobaron y evaluado por otros que han usado estos resúmenes.

¿No estás satisfecho? Elige otro documento

¡No te preocupes! Puedes elegir directamente otro documento que se ajuste mejor a lo que buscas.

Paga como quieras, empieza a estudiar al instante

Sin suscripción, sin compromisos. Paga como estés acostumbrado con tarjeta de crédito y descarga tu documento PDF inmediatamente.

Student with book image

“Comprado, descargado y aprobado. Así de fácil puede ser.”

Alisha Student

Preguntas frecuentes