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Multimodal E-Commerce Product Classification Using Hierarchical Fusion

Tsegaye Misikir Tashu, Sara Fattouh, P. Kiss, Tomáš Horváth

202210 citationsDOI

Abstract

In this work, we present a multi-modal model for commercial product classification, that combines features extracted by multiple neural network models from textual (Camem-BERT and FlauBERT) and visual data (SE-ResNeXt-50), using simple fusion techniques. The proposed method significantly outperformed the performance of the unimodal models, as well as the reported performance of similar models on our specific task. We made experiments with multiple fusing techniques, and found, that the best preforming technique to combine the individual embedding of the unimodal network is based on the combination of concatenation and averaging the feature vectors. Each modality complemented the shortcomings of the other modalities, demonstrating that increasing the number of modalities can be an effective method for improving the performance of multi-label and multimodal classification problems.

Topics & Concepts

Concatenation (mathematics)Computer scienceArtificial intelligenceModality (human–computer interaction)ModalitiesEmbeddingFeature (linguistics)Pattern recognition (psychology)ModalTask (project management)Machine learningArtificial neural networkProduct (mathematics)MathematicsEngineeringChemistrySystems engineeringSocial scienceGeometryLinguisticsCombinatoricsPolymer chemistryPhilosophySociologyText and Document Classification TechnologiesWeb Data Mining and AnalysisSentiment Analysis and Opinion Mining