Part 3: Big Data Analysis and Machine LearningInternational audienceSentiment analysis has been a hot area in the research field of language understanding, but complex deep neural network used in it is still lacked. In this study, we combine convolutional neural networks (CNNs) and BLSTM (bidirectional Long Short-Term Memory) as a complex model to analyze the sentiment orientation of text. First, we design an appropriate structure to combine CNN and BLSTM to find out the most optimal one layer, and then conduct six experiments, including single CNN and single LSTM, for the test and accuracy comparison. Specially, we pre-process the data to transform the words into word vectors to improve the accuracy of the classification result. The classi...
With the rapid development of the Internet and related technologies, network data has shown a spurt ...
Social media is a rich source of information nowadays. If we look into social media, sentiment analy...
Today, we are living in a data-driven world. Due to a surge in data generation, there is a need for ...
With the massive growth of mining text, the need for sentiment analysis is gradually gaining ground....
Due to the increasing popularity of posting evaluations, sentiment analysis has grown to be a crucia...
The fabulous results of Deep Convolution Neural Networks in computer vision and image analysis have ...
Sentiment analysis has been a hot research topic in NLP and data mining fields in the last decade. T...
Since the turn of the century, as millions of user’s opinions are available on the web, sentiment an...
Due to the increasing growth of social media content on websites such as Twitter and Facebook, analy...
Thanks to social media, people are now able to leave guiding comments quickly about their favorite r...
Sentiment Classification is a key area of natural language processing research that is frequently ut...
Customer reviews about a brand or product, movie reviews, and social media reviews can be analyzed t...
Sentiment analysis aims to automatically classify the subject’s sentiment (e.g., positive, negative,...
Due to outstanding feature extraction ability, neural networks have recently achieved great success ...
Sentiment classification is an important task in Natural Language Processing (NLP) area. Deep neural...
With the rapid development of the Internet and related technologies, network data has shown a spurt ...
Social media is a rich source of information nowadays. If we look into social media, sentiment analy...
Today, we are living in a data-driven world. Due to a surge in data generation, there is a need for ...
With the massive growth of mining text, the need for sentiment analysis is gradually gaining ground....
Due to the increasing popularity of posting evaluations, sentiment analysis has grown to be a crucia...
The fabulous results of Deep Convolution Neural Networks in computer vision and image analysis have ...
Sentiment analysis has been a hot research topic in NLP and data mining fields in the last decade. T...
Since the turn of the century, as millions of user’s opinions are available on the web, sentiment an...
Due to the increasing growth of social media content on websites such as Twitter and Facebook, analy...
Thanks to social media, people are now able to leave guiding comments quickly about their favorite r...
Sentiment Classification is a key area of natural language processing research that is frequently ut...
Customer reviews about a brand or product, movie reviews, and social media reviews can be analyzed t...
Sentiment analysis aims to automatically classify the subject’s sentiment (e.g., positive, negative,...
Due to outstanding feature extraction ability, neural networks have recently achieved great success ...
Sentiment classification is an important task in Natural Language Processing (NLP) area. Deep neural...
With the rapid development of the Internet and related technologies, network data has shown a spurt ...
Social media is a rich source of information nowadays. If we look into social media, sentiment analy...
Today, we are living in a data-driven world. Due to a surge in data generation, there is a need for ...