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Pinned repositories
Repositories
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NLFF
Forked from AndreaPicasso/NLFF -
conv-emotion
This repo contains implementation of different architectures for emotion recognition in conversations
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personality-detection
Implementation of a hierarchical CNN based model to detect Big Five personality traits
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CASCADE
This repo contains code to detect sarcasm from text in discussion forum using deep learning
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MELD
MELD: A Multimodal Multi-Party Dataset for Emotion Recognition in Conversation
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cognitive-inspired-domain-adaptation
Forked from fxing79/cognitive-inspired-domain-adaptationThis repository hosts sample code and experimental results for the CDAHS algorithm
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neeq-annual-reports
A dataset for business models for small companies and NLP research.
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hfusion
Multimodal sentiment analysis using hierarchical fusion with context modeling
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IARM
IARM: Inter-Aspect Relation Modeling with Memory Networks in Aspect-Based Sentiment Analysis, EMNLP 2018
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intelligent-bayesian-asset-allocation
Forked from fxing79/ibaaA public available dataset for using market sentiment for financial asset allocation.
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semantic-vine-growing
A python implementation of the semantic vine growing algorithm.
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multimodal-fusion
Forked from soujanyaporia/multimodal-sentiment-analysisAttention-based multimodal fusion for sentiment analysis
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aspect-extraction
Forked from soujanyaporia/aspect-extractionAspect extraction from product reviews - window-CNN+maxpool+CRF, BiLSTM+CRF, MLP+CRF Edit
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context2vec
This code extracts context embedding from sentence
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aspect-based-sentiment-analysis
Forked from peace195/aspect-based-sentiment-analysisAspect Based Sentiment Analysis
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sentic-lstm
Sentic Long Short Term Memory
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one-class-svm
One Class SCM
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concept-parser
concept parser
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multimodal-sentiment-detection
This code has been developed for detecting sentiment in videos using Convolutional Neural Network and Multiple Kernel Learning.