Gaze and event tracking for evaluation of recommendation-driven purchase

CC BY Logo DOI

Recommendation systems play an important role in e-commerce turnover by presenting personalized recommendations. Due to the vast amount of marketing content online, users are less susceptible to these suggestions. In addition to the accuracy of a recommendation, its presentation, layout, and other visual aspects can improve its effectiveness. This study evaluates the visual aspects of recommender interfaces. Vertical and horizontal recommendation layouts are tested, along with different visual intensity levels of item presentation, and conclusions obtained with a number of popular machine learning methods are discussed. Results from the implicit feedback study of the effectiveness of recommending interfaces for four major e-commerce websites are presented. Two different methods of observing user behavior were used, i.e., eye-tracking and document object model (DOM) implicit event tracking in the browser, which allowed collecting a large amount of data related to user activity and physical parameters of recommending interfaces. Results have been analyzed in order to compare the reliability and applicability of both methods. Observations made with eye tracking and event tracking led to similar results regarding recommendation interface evaluation. In general, vertical interfaces showed higher effectiveness compared to horizontal ones, with the first and second positions working best, and the worse performance of horizontal interfaces probably being connected with banner blindness. Neural networks provided the best modeling results of the recommendation-driven purchase (RDP) phenomenon.

Tytuł
Gaze and event tracking for evaluation of recommendation-driven purchase
Twórca
Sulikowski Piotr
Słowa kluczowe
e-commerce; human activity recognition; human–computer interaction; eye tracking; event tracking; mouse tracking; recommender systems; visual; layout; implicit feedback
Współtwórca
Zdziebko Tomasz ORCID 0000-0003-4136-3636
Coussement Kristof
Dyczkowski Krzysztof
Kluza Krzysztof
Sachpazidu-Wójcicka Karina
Data
2021
Typ zasobu
artykuł
Identyfikator zasobu
DOI 10.3390/s21041381
Źródło
Sensors, 2021, vol. 21 issue 4, [br. s.], 1381
Język
angielski
Prawa autorskie
CC BY CC BY
Kategorie
Publikacje pracowników US
Data udostępnienia17 wrz 2021, 12:54:35
Data mod.16 mar 2022, 07:37:45
DostępPubliczny
Aktywnych wyświetleń0