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contributor authorEdwards, Kristen M.
contributor authorPeng, Aoran
contributor authorMiller, Scarlett R.
contributor authorAhmed, Faez
date accessioned2022-05-08T08:26:10Z
date available2022-05-08T08:26:10Z
date copyright12/17/2021 12:00:00 AM
date issued2021
identifier issn1050-0472
identifier othermd_144_4_041402.pdf
identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4283922
description abstractA picture is worth a thousand words, and in design metric estimation, a word may be worth a thousand features. Pictures are awarded this worth because they can encode a plethora of information. When evaluating designs, we aim to capture a range of information as well, including usefulness, uniqueness, and novelty of a design. The subjective nature of these concepts makes their evaluation difficult. Still, many attempts have been made and metrics developed to do so, because design evaluation is integral to the creation of novel solutions. The most common metrics used are the consensual assessment technique (CAT) and the Shah, Vargas-Hernandez, and Smith (SVS) method. While CAT is accurate and often regarded as the “gold standard,” it relies on using expert ratings, making CAT expensive and time-consuming. Comparatively, SVS is less resource-demanding, but often criticized as lacking sensitivity and accuracy. We utilize the complementary strengths of both methods through machine learning. This study investigates the possibility of using machine learning to predict expert creativity assessments from more accessible nonexpert survey results. The SVS method results in a text-rich dataset about a design. We utilize these textual design representations and the deep semantic relationships that words and sentences encode to predict more desirable design metrics, including CAT metrics. We demonstrate the ability of machine learning models to predict design metrics from the design itself and SVS survey information. We show that incorporating natural language processing (NLP) improves prediction results across design metrics, and that clear distinctions in the predictability of certain metrics exist. Our code and additional information about our work are available on the MIT DeCoDE Lab website.1
publisherThe American Society of Mechanical Engineers (ASME)
titleIf a Picture is Worth 1000 Words, Is a Word Worth 1000 Features for Design Metric Estimation?
typeJournal Paper
journal volume144
journal issue4
journal titleJournal of Mechanical Design
identifier doi10.1115/1.4053130
journal fristpage41402-1
journal lastpage41402-10
page10
treeJournal of Mechanical Design:;2021:;volume( 144 ):;issue: 004
contenttypeFulltext


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