A Recommender System for Equitable Public Art Curation and Installation

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Abstract

The placement of art in public spaces can have a significant impact on who feels a sense of belonging. In cities, public art communicates whose interests and culture are being favored. In this paper, we propose a graph matching approach with local constraints to build a curatorial tool for selecting public art in a way that supports inclusive spaces. We develop a cost matrix by drawing on Schelling’s model of segregation. Using the cost matrix as an input, the optimization problem is solved via projected gradient descent to obtain a soft assignment matrix. We discuss regularization terms to set curatorial constraints. Our optimization program allocates artwork to public spaces and walls in a way that de-prioritizes “in-group” preferences, by satisfying minimum representation and exposure criteria. We draw on existing literature to develop a fairness metric for our algorithmic output. Using Tufts University as a testbed, we assess the effectiveness of our approach and discuss its potential pitfalls from both a curatorial and equity standpoint.

Description

CAM/DoMSS Seminar
Monday, August 29
1:30 pm
Zoom meeting room link:  https://asu.zoom.us/j/83816961285


Note: This meeting will be via Zoom. This semester, we anticipate some talks will be in person but most will be by Zoom.

Speaker

Anna Haensch
Tufts University

Location
Virtual via Zoom