Melucci, Massimo
Quantum Cognitively Motivated Decision Fusion for Video Sentiment Analysis
Gkoumas, Dimitris, Li, Qiuchi, Dehdashti, Shahram, Melucci, Massimo, Yu, Yijun, Song, Dawei
Video sentiment analysis as a decision-making process is inherently complex, involving the fusion of decisions from multiple modalities and the so-caused cognitive biases. Inspired by recent advances in quantum cognition, we show that the sentiment judgment from one modality could be incompatible with the judgment from another, i.e., the order matters and they cannot be jointly measured to produce a final decision. Thus the cognitive process exhibits "quantum-like" biases that cannot be captured by classical probability theories. Accordingly, we propose a fundamentally new, quantum cognitively motivated fusion strategy for predicting sentiment judgments. In particular, we formulate utterances as quantum superposition states of positive and negative sentiment judgments, and uni-modal classifiers as mutually incompatible observables, on a complex-valued Hilbert space with positive-operator valued measures. Experiments on two benchmarking datasets illustrate that our model significantly outperforms various existing decision level and a range of state-of-the-art content-level fusion approaches. The results also show that the concept of incompatibility allows effective handling of all combination patterns, including those extreme cases that are wrongly predicted by all uni-modal classifiers.
Binary Classifier Inspired by Quantum Theory
Tiwari, Prayag, Melucci, Massimo
Machine Learning (ML) helps us to recognize patterns from raw data. ML is used in numerous domains i.e. biomedical, agricultural, food technology, etc. Despite recent technological advancements, there is still room for substantial improvement in prediction. Current ML models are based on classical theories of probability and statistics, which can now be replaced by Quantum Theory (QT) with the aim of improving the effectiveness of ML. In this paper, we propose the Binary Classifier Inspired by Quantum Theory (BCIQT) model, which outperforms the state of the art classification in terms of recall for every category.
Multi-class Classification Model Inspired by Quantum Detection Theory
Tiwari, Prayag, Melucci, Massimo
Machine Learning has become very famous currently which assist in identifying the patterns from the raw data. Technological advancement has led to substantial improvement in Machine Learning which, thus helping to improve prediction. Current Machine Learning models are based on Classical Theory, which can be replaced by Quantum Theory to improve the effectiveness of the model. In the previous work, we developed binary classifier inspired by Quantum Detection Theory. In this extended abstract, our main goal is to develop multi-class classifier. We generally use the terminology multinomial classification or multi-class classification when we have a classification problem for classifying observations or instances into one of three or more classes.
How Quantum Theory Is Developing the Field of Information Retrieval
Song, Dawei (The Robert Gordon University) | Lalmas, Mounia (University of Glasgow) | Rijsbergen, Keith van (University of Glasgow) | Frommholz, Ingo (University of Glasgow) | Piwowarski, Benjamin (University of Glasgow) | Wang, Jun (The Robert Gordon University) | Zhang, Peng (The Robert Gordon University) | Zuccon, Guido (University of Glasgow) | Bruza, Peter (Queensland University of Technology) | Arafat, Sachi (University of Glasgow) | Azzopardi, Leif (University of Glasgow) | Buccio, Emanuele Di (University of Padua) | Huertas-Rosero, Alvaro (University of Glasgow) | Hou, Yuexian (Tianjin University) | Melucci, Massimo (University of Padua) | Rueger, Stefan (The Open University)