13:30
Saturday
Oct 18
13:30
16:30
17:00
17:30
18:00
Sunday
Oct 19
14:00
Monday
Oct 20
08:00
12:00
17:00
17:30
Tuesday
Oct 21
13:00
14:00
15:00
16:00
16:30
17:15
17:30
19:30
Wednesday
Oct 22
09:00
11:30
12:00
13:00
13:30
17:00
16:30
17:00
18:00
17:00
17:30
Thursday
Oct 23
09:00
11:00
11:30
15:30
17:00
17:30
18:00
19:30
Friday
Oct 24
08:00
12:00
16:00
17:00
17:30
Saturday
Oct 25
16:00
Monday
Oct 27
10:00
17:15
17:30
18:00
18:30
Tuesday
Oct 28
13:00
14:00
17:00
18:00
18:30
19:30
Wednesday
Oct 29
13:00
13:30
17:15
17:30
18:00
Thursday
Oct 30
13:00
17:00
17:30
18:00
18:30
Friday
Oct 31
18:00
Monday
Nov 3
18:00
Tuesday
Nov 4
14:00
16:00
18:00
19:30
Wednesday
Nov 5
12:00
13:00
17:30
18:00
Thursday
Nov 6
08:30
13:00
16:30
17:30
18:30
Friday
Nov 7
11:30
17:00
Monday
Nov 10
16:30
17:00
Tuesday
Nov 11
14:00
17:00
17:30
18:00
Wednesday
Nov 12
14:00
14:30
17:00
17:30
18:00
Thursday
Nov 13
13:00
16:00
16:30
17:00
18:00
18:05
Saturday
Nov 15
10:30
Monday
Nov 17
13:00
18:00
18:30
Tuesday
Nov 18
09:30
14:00
17:30
18:00
18:30
Wednesday
Nov 19
16:00
18:00
19:30
Thursday
Nov 20
16:00
16:30
17:00
18:00
Tuesday
Nov 25
14:00
17:00
18:00
18:30
Wednesday
Nov 26
17:30
18:00
Thursday
Nov 27
13:00
17:30
18:00
Friday
Nov 28
10:00
15:30
17:30
Monday
Dec 1
18:00
Tuesday
Dec 2
14:00
19:30
Wednesday
Dec 3
19:00
Thursday
Dec 4
13:00
14:30
18:00
18:30
Friday
Dec 5
18:15
Saturday
Dec 6
11:00
Monday
Dec 8
18:00
Wednesday
Dec 10
18:00
Monday
Dec 15
19:00
Tuesday
Jan 13
18:00
Wednesday
Jan 14
18:00
Tuesday
Jan 20
18:00
Wednesday
Jan 21
18:00
Thursday
Jan 22
13:00
17:30
18:00
Monday
Jan 26
18:30
19:00
Tuesday
Jan 27
18:00
Wednesday
Jan 28
18:00
Thursday
Jan 29
13:00
18:00
Tuesday
Feb 3
18:00
Wednesday
Feb 4
19:00
Thursday
Feb 5
18:00
Monday
Feb 9
18:30
Tuesday
Feb 10
18:00
Thursday
Feb 12
18:00
Tuesday
Feb 17
18:00
Thursday
Feb 19
18:00
Tuesday
Feb 24
18:00
Wednesday
Feb 25
18:00
Thursday
Feb 26
18:00
Tuesday
Mar 3
18:00
Wednesday
Mar 4
18:00
Thursday
Mar 5
18:00
Tuesday
Mar 10
18:00
Thursday
Mar 12
18:00
Tuesday
Mar 17
18:00
Wednesday
Mar 18
19:00
Thursday
Mar 19
18:00
Monday
Mar 23
18:00
Monday
Apr 13
16:00
Tuesday
Apr 14
16:00
Wednesday
Apr 15
16:00
Tuesday
Apr 21
16:00
Wednesday
Apr 22
16:00
Tuesday
Apr 28
16:00
Wednesday
Apr 29
17:00
Tuesday
May 5
16:00
Wednesday
May 6
16:00
Monday
May 11
16:00
Tuesday
May 12
16:00
Wednesday
May 13
16:00
Monday
May 18
17:00
Wednesday
May 20
16:00
Thursday
May 21
16:00
Tuesday
May 26
16:00
Thursday
May 28
16:00
Tuesday
Jun 2
16:00
Wednesday
Jun 3
17:00
Tuesday
Jun 9
16:00
Wednesday
Jun 10
16:00
Thursday
Jun 11
16:00
Monday
Jun 15
16:00
Wednesday
Jun 17
16:00
Thursday
Jun 18
16:00
Tuesday
Jun 23
16:00
Wednesday
Sep 16
13:00
Oxford University
October 22
Determining consumer preferences and utility is a foundational challenge in economics. They are central in determining consumer behaviour through the utility-maximising consumer decision-making process. However, preferences and utilities are not observable and may not even be known to the individual making the choice; only the outcome is observed, often in the form of demand. Uncovering the shape of utility functions is important, as its curvature governs a consumer's willingness to substitute between goods, providing the key causal mechanism for predicting their real-world responses to price changes, but is largely left unexplored.
In this talk, Marta Grześkiewicz will present an algorithm for uncovering a utility function based on observational consumption data. The algorithm, Preference Extraction and Reward Learning (PEARL) is able to uncover a representation of the utility function that best rationalises observed consumer choice data given any specified functional form. Towards this, she introduces a flexible utility function, the Input-Concave Neural Network, which is a neural network with concave activation functions that is able to capture complex relationships across goods, including cross-price elasticities. The method is shown to obtain near-zero errors on counterfactual predictions on simulated noise-free and noisy data.
About the speaker
Marta Grześkiewicz is a College Assistant Professor (Early Career Fellowship), Director of Studies, and Fellow in Economics at St John’s College, University of Cambridge. She holds a BA in Economics from the University of Cambridge, and an MSc in Data Science and PhD in Economics and Machine Learning from UCL. Her research interests lie at the intersection of economics and machine learning. Her current projects involve developing algorithms to model choice and decision-making by economic agents, with applications in consumer theory and behavioural finance, agent-based modelling with machine learning in banking and finance, and the integration of economic theory into machine learning models for economic forecasting.
Please note our seminars take place in person and online but are not recorded.