


Research on intranet intrusion detection technology based on deep learning
As network attacks become increasingly complex and concealed, intranet security issues have also attracted increasing attention. Intranet intrusion detection technology is an important means to ensure corporate network security. Traditional intrusion detection technology mainly relies on traditional means such as rule libraries and feature libraries. However, this method has problems such as high missed detection rate and high false positive rate. Intranet intrusion detection technology based on deep learning has become an important way to solve these problems.
Deep learning is an emerging branch of artificial intelligence. It uses the human brain neural network as a model and achieves high-accuracy prediction and classification capabilities through learning iterations of large amounts of data. Deep learning is widely used in image, voice and other fields, and is increasingly used in the field of network security.
Intranet intrusion detection technology based on deep learning has the following advantages compared with traditional methods:
- Strong adaptability: In view of the rapid update of network attack methods, traditional methods The rule base and feature base need to be continuously maintained and updated, and deep learning-based technology can adaptively adjust the model by learning large amounts of data to better discover and deal with various network security threats.
- Good robustness: Traditional methods are not very tolerant of changes by attackers. Once the attacker changes in attack methods, traditional methods may miss detection, while deep learning-based technology can learn Detection is based on the characteristics of the data and is relatively more tolerant of changes by attackers.
- High accuracy: Deep learning-based technology can find the best model through iterative learning, thereby improving detection accuracy.
In specific practice, intranet intrusion detection technology based on deep learning is mainly divided into several steps such as data preprocessing, feature extraction, feature conversion and classification prediction. Among them, data preprocessing mainly involves operations such as cleaning, extreme value processing and normalization of data to ensure the quality and standardization of data; feature extraction is to transform raw data into quantifiable feature vectors that can be processed by machine learning algorithms. , these feature vectors usually contain a large amount of statistical information, frequency domain information, time domain information, etc.; feature conversion is to process the feature vectors and perform operations such as comparison, filtering and merging to facilitate prediction by the machine learning model; classification prediction is through Machine learning models perform classification predictions to distinguish abnormal data from normal data.
It is worth noting that intranet intrusion detection technology based on deep learning is still in the development stage and faces many challenges. The biggest challenge is that it is difficult for deep learning algorithms to achieve good performance when there is insufficient data. Therefore, when applying deep learning-based intranet intrusion detection technology, the quality and diversity of data are very important.
To sum up, intranet intrusion detection technology based on deep learning is a new technology with application potential. With the increase in various types of network attack methods, deep learning-based technology will play an increasingly important role in the field of intranet security. More research and practice will further promote the development and popularization of this technology.
The above is the detailed content of Research on intranet intrusion detection technology based on deep learning. For more information, please follow other related articles on the PHP Chinese website!

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

AI Hentai Generator
Generate AI Hentai for free.

Hot Article

Hot Tools

Notepad++7.3.1
Easy-to-use and free code editor

SublimeText3 Chinese version
Chinese version, very easy to use

Zend Studio 13.0.1
Powerful PHP integrated development environment

Dreamweaver CS6
Visual web development tools

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

Hot Topics



BERT is a pre-trained deep learning language model proposed by Google in 2018. The full name is BidirectionalEncoderRepresentationsfromTransformers, which is based on the Transformer architecture and has the characteristics of bidirectional encoding. Compared with traditional one-way coding models, BERT can consider contextual information at the same time when processing text, so it performs well in natural language processing tasks. Its bidirectionality enables BERT to better understand the semantic relationships in sentences, thereby improving the expressive ability of the model. Through pre-training and fine-tuning methods, BERT can be used for various natural language processing tasks, such as sentiment analysis, naming

Activation functions play a crucial role in deep learning. They can introduce nonlinear characteristics into neural networks, allowing the network to better learn and simulate complex input-output relationships. The correct selection and use of activation functions has an important impact on the performance and training results of neural networks. This article will introduce four commonly used activation functions: Sigmoid, Tanh, ReLU and Softmax, starting from the introduction, usage scenarios, advantages, disadvantages and optimization solutions. Dimensions are discussed to provide you with a comprehensive understanding of activation functions. 1. Sigmoid function Introduction to SIgmoid function formula: The Sigmoid function is a commonly used nonlinear function that can map any real number to between 0 and 1. It is usually used to unify the

Latent Space Embedding (LatentSpaceEmbedding) is the process of mapping high-dimensional data to low-dimensional space. In the field of machine learning and deep learning, latent space embedding is usually a neural network model that maps high-dimensional input data into a set of low-dimensional vector representations. This set of vectors is often called "latent vectors" or "latent encodings". The purpose of latent space embedding is to capture important features in the data and represent them into a more concise and understandable form. Through latent space embedding, we can perform operations such as visualizing, classifying, and clustering data in low-dimensional space to better understand and utilize the data. Latent space embedding has wide applications in many fields, such as image generation, feature extraction, dimensionality reduction, etc. Latent space embedding is the main

Written previously, today we discuss how deep learning technology can improve the performance of vision-based SLAM (simultaneous localization and mapping) in complex environments. By combining deep feature extraction and depth matching methods, here we introduce a versatile hybrid visual SLAM system designed to improve adaptation in challenging scenarios such as low-light conditions, dynamic lighting, weakly textured areas, and severe jitter. sex. Our system supports multiple modes, including extended monocular, stereo, monocular-inertial, and stereo-inertial configurations. In addition, it also analyzes how to combine visual SLAM with deep learning methods to inspire other research. Through extensive experiments on public datasets and self-sampled data, we demonstrate the superiority of SL-SLAM in terms of positioning accuracy and tracking robustness.

In today's wave of rapid technological changes, Artificial Intelligence (AI), Machine Learning (ML) and Deep Learning (DL) are like bright stars, leading the new wave of information technology. These three words frequently appear in various cutting-edge discussions and practical applications, but for many explorers who are new to this field, their specific meanings and their internal connections may still be shrouded in mystery. So let's take a look at this picture first. It can be seen that there is a close correlation and progressive relationship between deep learning, machine learning and artificial intelligence. Deep learning is a specific field of machine learning, and machine learning

1. Introduction Vector retrieval has become a core component of modern search and recommendation systems. It enables efficient query matching and recommendations by converting complex objects (such as text, images, or sounds) into numerical vectors and performing similarity searches in multidimensional spaces. From basics to practice, review the development history of Elasticsearch vector retrieval_elasticsearch As a popular open source search engine, Elasticsearch's development in vector retrieval has always attracted much attention. This article will review the development history of Elasticsearch vector retrieval, focusing on the characteristics and progress of each stage. Taking history as a guide, it is convenient for everyone to establish a full range of Elasticsearch vector retrieval.

Almost 20 years have passed since the concept of deep learning was proposed in 2006. Deep learning, as a revolution in the field of artificial intelligence, has spawned many influential algorithms. So, what do you think are the top 10 algorithms for deep learning? The following are the top algorithms for deep learning in my opinion. They all occupy an important position in terms of innovation, application value and influence. 1. Deep neural network (DNN) background: Deep neural network (DNN), also called multi-layer perceptron, is the most common deep learning algorithm. When it was first invented, it was questioned due to the computing power bottleneck. Until recent years, computing power, The breakthrough came with the explosion of data. DNN is a neural network model that contains multiple hidden layers. In this model, each layer passes input to the next layer and

Editor | Radish Skin Since the release of the powerful AlphaFold2 in 2021, scientists have been using protein structure prediction models to map various protein structures within cells, discover drugs, and draw a "cosmic map" of every known protein interaction. . Just now, Google DeepMind released the AlphaFold3 model, which can perform joint structure predictions for complexes including proteins, nucleic acids, small molecules, ions and modified residues. The accuracy of AlphaFold3 has been significantly improved compared to many dedicated tools in the past (protein-ligand interaction, protein-nucleic acid interaction, antibody-antigen prediction). This shows that within a single unified deep learning framework, it is possible to achieve
