3,468 research outputs found
A Machine Learning Approach For Opinion Holder Extraction In Arabic Language
Opinion mining aims at extracting useful subjective information from reliable
amounts of text. Opinion mining holder recognition is a task that has not been
considered yet in Arabic Language. This task essentially requires deep
understanding of clauses structures. Unfortunately, the lack of a robust,
publicly available, Arabic parser further complicates the research. This paper
presents a leading research for the opinion holder extraction in Arabic news
independent from any lexical parsers. We investigate constructing a
comprehensive feature set to compensate the lack of parsing structural
outcomes. The proposed feature set is tuned from English previous works coupled
with our proposed semantic field and named entities features. Our feature
analysis is based on Conditional Random Fields (CRF) and semi-supervised
pattern recognition techniques. Different research models are evaluated via
cross-validation experiments achieving 54.03 F-measure. We publicly release our
own research outcome corpus and lexicon for opinion mining community to
encourage further research
Adversarial Reprogramming of Text Classification Neural Networks
Adversarial Reprogramming has demonstrated success in utilizing pre-trained
neural network classifiers for alternative classification tasks without
modification to the original network. An adversary in such an attack scenario
trains an additive contribution to the inputs to repurpose the neural network
for the new classification task. While this reprogramming approach works for
neural networks with a continuous input space such as that of images, it is not
directly applicable to neural networks trained for tasks such as text
classification, where the input space is discrete. Repurposing such
classification networks would require the attacker to learn an adversarial
program that maps inputs from one discrete space to the other. In this work, we
introduce a context-based vocabulary remapping model to reprogram neural
networks trained on a specific sequence classification task, for a new sequence
classification task desired by the adversary. We propose training procedures
for this adversarial program in both white-box and black-box settings. We
demonstrate the application of our model by adversarially repurposing various
text-classification models including LSTM, bi-directional LSTM and CNN for
alternate classification tasks
- …