Geschreven door studenten die geslaagd zijn Direct beschikbaar na je betaling Online lezen of als PDF Verkeerd document? Gratis ruilen 4,6 TrustPilot
logo-home
Tentamen (uitwerkingen)

Exercise Collection Decision Science II | ORL 30306 | Wageningen

Beoordeling
-
Verkocht
-
Pagina's
8
Cijfer
7-8
Geüpload op
13-07-2026
Geschreven in
2025/2026

This exercise collection covers Decision Science II (ORL 30306) at Wageningen University, containing 7 parts with practical problems on core decision-making topics. The exercises span Bayesian updating, expected utility and certainty equivalents, utility elicitation, Bayesian decision analysis, portfolio theory, and stochastic dominance, with real-world applications like medical testing, insurance decisions, and aircraft search optimization. Ideal for exam preparation and mastering the quantitative methods taught in the course, with worked problems that reinforce lecture concepts and develop problem-solving skills.

Meer zien Lees minder

Voorbeeld van de inhoud

Decision Science II · ORL 30306 Exercise Collection




Decision Science II
ORL 30306 — Wageningen University


Exercise Collection
Bayesian Updating · Expected Utility & Certainty Equivalents · Value of
Information · Portfolio Theory · Stochastic Dominance



Part Topic Exercises

1 Bayesian updating (DA2/DA3) 1.1 – 1.5

2 Expected utility & certainty equivalents (Lecture 7) 2.1 – 2.3

3 Utility application: fertilizer decision (DA3) 3.1

4 Eliciting your own utility function (self-test) 4.1

5 Bayesian decision analysis: cattle purchase (DA12) 5.1

6 Portfolio theory (DA10) 6.1 – 6.2

7 Stochastic dominance (DA10) 7.1




Page 1

, Decision Science II · ORL 30306 Exercise Collection




Part 1 — Bayesian Updating
Bayes' theorem lets us update a prior degree of belief P(H) into a posterior P(H | E) once
evidence E is observed:
P(H | E) = P(E | H) · P(H) / P(E), with P(E) = Σ P(E | H ) · P(H )
i i


Exercise 1.1 — Medical test
Consider a rare and lethal disease that affects 1 out of every 1000 people. A test for this
disease is extremely accurate: if you have the disease, the test comes back positive 99% of
the time; if you do not have the disease, it comes back negative 98% of the time.
a) Suppose you test positive. What is the probability that you actually have the disease,
P(D+ | T+)?

Exercise 1.2 — Iterated testing
A positive test that implies only a small chance of disease seems useless — unless you test
again. You take the test a second time, now believing P(Disease) = 0.047 (all other numbers
unchanged).
a) What is P(D+ | T+) after a second positive test?
b) And after a third positive test?

Exercise 1.3 — Spam filter
A classic application of Bayesian updating in artificial intelligence is the Bayesian spam filter,
which helps e-mail services decide whether a message is spam based on certain words.
a) Given that an e-mail contains the word 'free', what is the updated probability that it is
spam, assuming 20% of all e-mails are spam, 60% of spam e-mails contain the word 'free',
and 5% of non-spam e-mails contain the word 'free'?

Exercise 1.4 — John Hinckley's trial
Approximately 1.5% of the US population suffers from schizophrenia. In 1982 John Hinckley
was on trial, accused of the attempted assassination of President Reagan. During the trial an
expert witness told the court that CAT scans of individuals diagnosed with schizophrenia
showed brain atrophy in 30% of cases, against only 2% for 'normal' people. Hinckley's defense
wanted to introduce his CAT scan — which showed brain atrophy — as evidence that he
suffered from this mental illness.
a) What is the probability that Hinckley was schizophrenic given that he had brain atrophy,
P(Sch+ | Atr+)?
b) Does the scan meaningfully strengthen the defense's case? Compare posterior with
prior.

Exercise 1.5 — Searching for a lost aircraft over the ocean
An aircraft disappears over the ocean and search teams must locate it. Based on radar data,
satellite signals and ocean-drift models, investigators divide the potential crash area into four
regions (A, B, C, D) with initial estimates:

Region Prior probability Remark

A 0.50 most probable, near last known location

B 0.30


Page 2

Documentinformatie

Geüpload op
13 juli 2026
Aantal pagina's
8
Geschreven in
2025/2026
Type
Tentamen (uitwerkingen)
Bevat
Alleen vragen
€6,06
Krijg toegang tot het volledige document:

Verkeerd document? Gratis ruilen Binnen 14 dagen na aankoop en voor het downloaden kun je een ander document kiezen. Je kunt het bedrag gewoon opnieuw besteden.
Geschreven door studenten die geslaagd zijn
Direct beschikbaar na je betaling
Online lezen of als PDF

Maak kennis met de verkoper
Seller avatar
sibrenwanjon

Maak kennis met de verkoper

Seller avatar
sibrenwanjon Wageningen University
Bekijk profiel
Volgen Je moet ingelogd zijn om studenten of vakken te kunnen volgen
Verkocht
-
Lid sinds
2 dagen
Aantal volgers
0
Documenten
4
Laatst verkocht
-

0,0

0 beoordelingen

5
0
4
0
3
0
2
0
1
0

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

Bezig met je bronvermelding?

Maak nauwkeurige citaten in APA, MLA en Harvard met onze gratis bronnengenerator.

Bezig met je bronvermelding?

Veelgestelde vragen