How to perform sentiment analysis and emotion recognition in C++?
How to perform sentiment analysis and emotion recognition in C?
Introduction:
In today's social media and Internet era, people generate a large amount of text data, which contains rich emotional colors. Sentiment analysis and emotion recognition have become an important task, which can help us understand and analyze people's emotions and emotional states in different scenarios. This article will introduce how to implement sentiment analysis and emotion recognition in C, and attach code examples to help readers understand and apply related technologies.
1. Background and definition of sentiment analysis
Sentiment analysis, also known as emotion discrimination, emotion recognition, etc., refers to processing input such as text or speech to determine the emotional tendency expressed in it. Common sentiment analysis tasks include sentiment classification (positive, negative, neutral) and sentiment intensity analysis (positive, negative, neutral degree). For example, sentiment analysis of reviews of a product on social media can help companies understand how satisfied users are with the product and where to improve it.
2. Implementation methods of sentiment analysis and emotion recognition
In C, technologies such as machine learning and natural language processing (NLP) can be used to implement sentiment analysis and emotion recognition. Several commonly used methods will be introduced below.
- Rule-based method
The rule-based method is a simple and intuitive sentiment analysis method. It determines emotional tendencies by defining a series of rules or keywords and judging whether these rules or keywords appear in the text. For example, we can define some positive keywords (such as "good", "like") and negative keywords (such as "bad", "hate"), then match the text and calculate the positive keywords and negative keywords The number of occurrences of words is used to determine emotional tendencies.
The following is a simple rule-based sentiment analysis code example:
#include <iostream> #include <string> int main() { std::string text; std::cout << "请输入一段文本:"; std::getline(std::cin, text); int positiveCount = 0; int negativeCount = 0; // 定义积极和消极的关键词 std::string positiveWords[] = {"好", "喜欢"}; std::string negativeWords[] = {"不好", "讨厌"}; // 判断文本中的关键词出现次数 for (auto word : positiveWords) { size_t pos = text.find(word); while (pos != std::string::npos) { positiveCount++; pos = text.find(word, pos + 1); } } for (auto word : negativeWords) { size_t pos = text.find(word); while (pos != std::string::npos) { negativeCount++; pos = text.find(word, pos + 1); } } // 根据关键词出现次数判断情感倾向 if (positiveCount > negativeCount) { std::cout << "积极情感" << std::endl; } else if (positiveCount < negativeCount) { std::cout << "消极情感" << std::endl; } else { std::cout << "中性情感" << std::endl; } return 0; }
After running the program, enter a piece of text, and the program will calculate the number of occurrences of positive and negative keywords in the text. , determine emotional tendencies and output results.
- Machine learning-based method
The machine learning-based method is a more accurate and automated sentiment analysis method. It builds an emotion classification model, learns the characteristics and rules of different emotions from a large amount of annotated data, and predicts new texts. Commonly used machine learning algorithms include Naive Bayes, Support Vector Machine, and deep learning.
The following is a sentiment analysis code example based on the Naive Bayes algorithm (using OpenCV's ml module):
#include <iostream> #include <opencv2/opencv.hpp> int main() { std::string text; std::cout << "请输入一段文本:"; std::getline(std::cin, text); cv::Ptr<cv::ml::NaiveBayes> model = cv::ml::NaiveBayes::create(); // 加载已经训练好的模型 model->load("model.xml"); // 提取文本特征 cv::Mat feature(1, text.size(), CV_32FC1); for (int i = 0; i < text.size(); i++) { feature.at<float>(0, i) = text[i]; } // 预测情感 int result = model->predict(feature); if (result == 0) { std::cout << "积极情感" << std::endl; } else if (result == 1) { std::cout << "消极情感" << std::endl; } else { std::cout << "中性情感" << std::endl; } return 0; }
After running the program, enter a piece of text and the program will load the The trained emotion classification model predicts based on text features and outputs emotional tendencies.
3. Summary
This article introduces how to implement sentiment analysis and emotion recognition in C, and provides two code examples based on rules and machine learning. Readers can choose appropriate methods and tools based on specific tasks and data characteristics to practice and apply sentiment analysis and emotion recognition. Sentiment analysis and emotion recognition can help us better understand and respond to people's emotional needs, and improve the quality and user experience of products and services.
References:
- Zhang Ding, "Research on Chinese Sentiment Classification Based on Naive Bayes";
- Tutorial: Basic Sentiment Analysis of Machine Learning, URL: https://blog.csdn.net/weixin_41190227/article/details/113689859.
The above is the detailed content of How to perform sentiment analysis and emotion recognition in C++?. For more information, please follow other related articles on the PHP Chinese website!

The history and evolution of C# and C are unique, and the future prospects are also different. 1.C was invented by BjarneStroustrup in 1983 to introduce object-oriented programming into the C language. Its evolution process includes multiple standardizations, such as C 11 introducing auto keywords and lambda expressions, C 20 introducing concepts and coroutines, and will focus on performance and system-level programming in the future. 2.C# was released by Microsoft in 2000. Combining the advantages of C and Java, its evolution focuses on simplicity and productivity. For example, C#2.0 introduced generics and C#5.0 introduced asynchronous programming, which will focus on developers' productivity and cloud computing in the future.

There are significant differences in the learning curves of C# and C and developer experience. 1) The learning curve of C# is relatively flat and is suitable for rapid development and enterprise-level applications. 2) The learning curve of C is steep and is suitable for high-performance and low-level control scenarios.

There are significant differences in how C# and C implement and features in object-oriented programming (OOP). 1) The class definition and syntax of C# are more concise and support advanced features such as LINQ. 2) C provides finer granular control, suitable for system programming and high performance needs. Both have their own advantages, and the choice should be based on the specific application scenario.

Converting from XML to C and performing data operations can be achieved through the following steps: 1) parsing XML files using tinyxml2 library, 2) mapping data into C's data structure, 3) using C standard library such as std::vector for data operations. Through these steps, data converted from XML can be processed and manipulated efficiently.

C# uses automatic garbage collection mechanism, while C uses manual memory management. 1. C#'s garbage collector automatically manages memory to reduce the risk of memory leakage, but may lead to performance degradation. 2.C provides flexible memory control, suitable for applications that require fine management, but should be handled with caution to avoid memory leakage.

C still has important relevance in modern programming. 1) High performance and direct hardware operation capabilities make it the first choice in the fields of game development, embedded systems and high-performance computing. 2) Rich programming paradigms and modern features such as smart pointers and template programming enhance its flexibility and efficiency. Although the learning curve is steep, its powerful capabilities make it still important in today's programming ecosystem.

C Learners and developers can get resources and support from StackOverflow, Reddit's r/cpp community, Coursera and edX courses, open source projects on GitHub, professional consulting services, and CppCon. 1. StackOverflow provides answers to technical questions; 2. Reddit's r/cpp community shares the latest news; 3. Coursera and edX provide formal C courses; 4. Open source projects on GitHub such as LLVM and Boost improve skills; 5. Professional consulting services such as JetBrains and Perforce provide technical support; 6. CppCon and other conferences help careers

C# is suitable for projects that require high development efficiency and cross-platform support, while C is suitable for applications that require high performance and underlying control. 1) C# simplifies development, provides garbage collection and rich class libraries, suitable for enterprise-level applications. 2)C allows direct memory operation, suitable for game development and high-performance computing.


Hot AI Tools

Undresser.AI Undress
AI-powered app for creating realistic nude photos

AI Clothes Remover
Online AI tool for removing clothes from photos.

Undress AI Tool
Undress images for free

Clothoff.io
AI clothes remover

Video Face Swap
Swap faces in any video effortlessly with our completely free AI face swap tool!

Hot Article

Hot Tools

Atom editor mac version download
The most popular open source editor

SublimeText3 Linux new version
SublimeText3 Linux latest version

SublimeText3 Mac version
God-level code editing software (SublimeText3)

SublimeText3 English version
Recommended: Win version, supports code prompts!

SAP NetWeaver Server Adapter for Eclipse
Integrate Eclipse with SAP NetWeaver application server.