How to catch a trend Learning from a real example

Best Binary Options Brokers 2020:
  • Binarium
    Binarium

    The Best Binary Options Broker 2020!
    Good for Beginners!
    Free Education + Free Demo Account!
    Get Your Sign-Up Bonus Now!

  • Binomo
    Binomo

    Only For Experienced Traders!

Machine Learning

What Is Machine Learning?

Machine learning is more than just a buzz-word — it is a technological tool that operates on the concept that a computer can learn information without human mediation. It uses algorithms to examine large volumes of information or training data to discover unique patterns. This system analyzes these patterns, groups them accordingly, and makes predictions. With traditional machine learning, the computer learns how to decipher information as it has been labeled by humans — hence, machine learning is a program that learns from a model of human-labeled datasets.

It is unique in how it becomes, in a way, intuitive. Through repetition, it learns by inference without a need to be deliberately programmed each and every time. However, a caveat: Machine learning can make mistakes and appropriate caution should be used. 1

Machine learning proves to be useful especially in today’s big data world. We come into contact with machine learning on a daily basis. It supports technologies such as identifying voice commands on our phones, recommending which songs to listen to on Spotify or which items to purchase next on Amazon, and even determining the fastest way to reach your destination on Waze, to name a few.

How Machine Learning Can Help Businesses

Machine Learning helps protect businesses from cyberthreats. However, it works best as part of a multilayered security solution.

Machine learning is also used in healthcare, helping doctors make better and faster diagnoses of diseases, and in financial institutions, detecting fraudulent activity that doesn’t fall within the usual spending patterns of consumers.

Machine Learning Algorithm Types

Supervised Machine Learning

The traditional machine learning type is called supervised machine learning, which necessitates guidance or supervision on the known results that should be produced. In supervised machine learning, the machine is taught how to process the input data. It is provided with the right training input, which also contains a corresponding correct label or result. From the input data, the machine is able to learn patterns and, thus, generate predictions for future events. A model that uses supervised machine learning is continuously taught with properly labeled training data until it reaches appropriate levels of accuracy.

Unsupervised Machine Learning

Unsupervised machine learning, through mathematical computations or similarity analyses, draws unknown conclusions based on unlabeled datasets.An unsupervised machine learning model learns to find the unseen patterns or peculiar structures in datasets. In unsupervised machine learning, the machine is able to understand and deduce patterns from data without human intervention. It is especially useful for applications where unseen data patterns or groupings need to be found or the pattern or structure searched for is not defined. This also refers to clustering.

Instance-Based Machine Learning

Another type is instance-based machine learning, which correlates newly encountered data with training data and creates hypotheses based on the correlation. To do this, instance-based machine learning uses quick and effective matching methods to refer to stored training data and compare it with new, never-before-seen data. It uses specific instances and computes distance scores or similarities between specific instances and training instances to come up with a prediction. An instance-based machine learning model is ideal for its ability to adapt to and learn from previously unseen data.

Best Binary Options Brokers 2020:
  • Binarium
    Binarium

    The Best Binary Options Broker 2020!
    Good for Beginners!
    Free Education + Free Demo Account!
    Get Your Sign-Up Bonus Now!

  • Binomo
    Binomo

    Only For Experienced Traders!

Machine Learning and Cybersecurity

The emergence of ransomware has brought machine learning into the spotlight, given its capability to detect ransomware attacks at time zero.

Evolution is malware’s game. A few years ago, attackers used the same malware with the same hash value — a malware’s fingerprint — multiple times before parking it permanently. Today, these attackers use some malware types that generate unique hash values frequently. For example, the Cerber ransomware can generate a new malware variant — with a new hash value every 15 seconds.This means that these malware are used just once, making them extremely hard to detect using old techniques. Enter machine learning. With machine learning’s ability to catch such malware forms based on family type, it is without a doubt a logical and strategic cybersecurity tool.

Machine learning algorithms are able to make accurate predictions based on previous experience with malicious programs and file-based threats. By analyzing millions of different types of known cyber risks, machine learning is able to identify brand-new or unclassified attacks that share similarities with known ones.

From predicting new malware based on historical data to effectively tracking down threats to block them, machine learning showcases its efficacy in helping cybersecurity solutions bolster overall cybersecurity posture.

And though machine learning has become a major talking point in cybersecurity fairly recently, it has already been an integrated tool in Trend Micro’s security solutions since 2005 — way before the buzz ever started.

How Does Trend Micro Use Machine Learning?

Machine learning is a key technology in the Trend Micro™ XGen™ security, a multi-layered approach to protecting endpoints and systems against different threats, blending traditional security technologies with newer ones and using the right technique at the right time.

For over a decade, Trend Micro has been harnessing the power of machine learning to eliminate spam emails, calculate web reputation, and chase down malicious social media activity. Trend Micro continuously develops the latest machine learning algorithms to analyze large volumes of data and predict the maliciousness of previously unknown file types.

A Connected Threat Defense for Tighter Security

Learn how Trend Micro’s Connected Threat Defense can improve an organizations security against new, 0-day threats by connecting defense, protection, response, and visibility across our solutions. Automate the detection of a new threat and the propagation of protections across multiple layers including endpoint, network, servers, and gateway solutions.

Trend Micro’s Machine Learning Milestones

As early as 2005, Trend Micro has utilized machine learning to combat spam emails via the Trend Micro Anti Spam Engine (TMASE) and Hosted Email Security (HES) solutions.

To accurately assign reputation ratings to websites (from pornography to shopping and gambling, among others), Trend Micro has been using machine learning technology in its Web Reputation Services since 2009.

Trend Micro’s Script Analyzer, part of the Deep Discovery™ solution, uses a combination of machine learning and sandbox technologies to identify webpages that use exploits in drive-by downloads.

With the goal of helping law enforcement with cybercriminal investigations dealing specifically with targeted attacks, Trend Micro has developed SPuNge, a system that uses a combination of clustering and correlation techniques to “identify groups of machines that share a similar behavior with respect to the malicious resources they access and the industry in which they operate.”

Trend Micro developed Trend Micro Locality Sensitive Hashing (TLSH), an approach to Locality Sensitive Hashing (LSH) that can be used in machine learning extensions of whitelisting. It generates hash values that can be analyzed for whitelisting purposes. In 2020, Trend Micro open sourced TLSH via GitHub to encourage proactive collaboration.

In 2020, Trend Micro successfully employed machine learning in its Mobile App Reputation Service (MARS) for both iOS and Android, as well as in its mobile security products (Trend Micro™ Mobile Security for Android™ for end users and Trend Micro™ Mobile Security for Enterprise for organizations).

Machine learning algorithms enable real-time detection of malware and even unknown threats using static app information and dynamic app behaviors. These algorithms used in Trend Micro’s multi-layered mobile security solutions are also able to detect repacked apps and help capacitate accurate mobile threat coverage in the TrendLabs Security Intelligence Blog.

Since 2020, Trend Micro has topped the AV Comparatives’ Mobile Security Reviews. The machine learning initiatives in MARS are also behind Trend Micro’s mobile public benchmarking continuously being at a 100 percent detection rate — with zero false warnings — in AV-TEST’s product review and certification reports in 2020.

Predictive Machine Learning Engine was developed in 2020 and is a key part of the Trend Micro XGen solution. It uses two types of machine learning: pre-execution machine learning that identifies malicious files based on the file structure, and run-time machine learning for files that execute malicious behavior.

AV-TEST featured Trend Micro Antivirus Plus solution on their MacOS Sierra test , which aims to see how security products will distinguish and protect the Mac system against malware threats. Trend Micro’s product has a detection rate of 99.5 percent for 184 Mac-exclusive threats, and more than 99 percent for 5,300 Windows test malware threats. It also has an additional system load time of just 5 seconds more than the reference time of 239 seconds.

Overall, at 99.5 percent, AV-TEST reported that Trend Micro’s Mac solution “provides excellent detection of malware threats and is also well recommended” with its minimal impact on system load (something more than 2 percent).

On February 7, 2020, Trend Micro further solidified its position at the forefront of machine learning technology — by being the first standalone next-generation intrusion prevention system (NGIPS) vendor to use machine learning in detecting and blocking attacks in-line in real time.

The patent-pending machine learning capabilities are incorporated in the Trend Micro™ TippingPoint® NGIPS solution, which is a part of the Network Defense solutions powered by XGen security.

Through advanced machine learning algorithms, unknown threats are properly classified to be either benign or malicious in nature for real-time blocking — with minimal impact on network performance.

Trend Micro’s Dual Approach to Machine Learning

Machine learning at the endpoint, though relatively new, is very important, as evidenced by fast-evolving ransomware’s prevalence. This is why Trend Micro applies a unique approach to machine learning at the endpoint — where it’s needed most.

Pre-execution machine learning, with its predictive ability, analyzes static file features and makes a determination of each one, blocks off malicious files, and reduces the risk of such files executing and damaging the endpoint or the network. Run-time machine learning, meanwhile, catches files that render malicious behavior during the execution stage and kills such processes immediately.

Both machine learning techniques are geared towards noise cancellation, which reduces false positives at different layers.

A high-quality and high-volume database is integral in making sure that machine learning algorithms remain exceptionally accurate. Trend Micro™ Smart Protection Network™ provides this via its hundreds of millions of sensors around the world. On a daily basis, 100 TB of data are analyzed, with 500,000 new threats identified every day. This global threat intelligence is critical to machine learning in cybersecurity solutions.

The Trend Micro™ XGen page provides a complete list of security solutions that use an effective blend of threat defense techniques — including machine learning.

Machine Learning vs. the Hype

How Is Big Data Relevant to Machine Learning?

The prevalence of the internet and the Internet of Things (IoT) — from devices, smart homes, and connected cars to smart cities — has made available large amounts of digital data that are generated on a daily basis, all available for collecting, analyzing, and utilizing.

These large amounts of data is aptly called big data. It is a combination of structured data (searchable by algorithms and databases) and unstructured data (hard or impossible to search via machine algorithm, such as macro files, emails, web searches, and images) that continue to grow at a highly accelerated pace. In fact, it is predicted that by 2025, 180 zettabytes (180 trillion gigabytes) of data will be generated.

Big data is being harnessed by enterprises big and small to better understand operational and marketing intelligences, for example, that aid in more well-informed business decisions. However, because the data is gargantuan in nature, it is impossible to process and analyze it using traditional methods.

Machine learning plays a pivotal role in addressing this predicament. Machine learning algorithms enable organizations to cluster and analyze vast amounts of data with minimal effort. But it’s not a one-way street — Machine learning needs big data for it to make more definitive predictions. Essentially, big data is necessary for machine learning to exist.

An understanding of how data works is imperative in today’s economic and political landscapes. And big data has become a goldmine for consumers, businesses, and even nation-states who want to monetize it, use it for power, or other gains.

The world of cybersecurity benefits from the marriage of machine learning and big data. As the current cyberthreat environment continues to expand exponentially, organizations can utilize big data and machine learning to gain a better understanding of threats, determine fraud and attack trends and patterns, as well as recognize security incidents almost immediately — without human intervention.

Cognizant of these benefits, Trend Micro has partnered up with Hadoop developers to help improve its security model. Hadoop is a popular big data framework used by giant tech companies such as Amazon Web Services, IBM, and Microsoft.

Are Data Mining and Machine Learning the Same?

Despite their similarities, data mining and machine learning are two different things. Both fall under the realm of data science and are often used interchangeably, but the difference lies in the details — and each one’s use of data.

Data mining is defined as the process of acquiring and extracting information from vast databases by identifying unique patterns and relationships in data for the purpose of making judicious business decisions. Data mining is effectively used for different purposes. A clothing company, for example, can use data mining to learn which items their customers are buying the most, or sort through thousands upon thousands of customer feedback, so they can adjust their marketing and production strategies.

Machine learning, on the other hand, uses data mining to make sense of the relationships between different datasets to determine how they are connected. Machine learning uses the patterns that arise from data mining to learn from it and make predictions.

To simplify, data mining is a means to find relationships and patterns among huge amounts of data while machine learning uses data mining to make predictions automatically and without needing to be programmed.

Is Machine Learning a Security Silver Bullet?

Machine learning is a useful cybersecurity tool — but it is not a silver bullet. While others paint machine learning as a magical black box or a complicated mathematical system that can teach itself to generate accurate predictions from data with possible false positives, we at Trend Micro view it as one valuable addition to other techniques that make up our multi-layer approach to security.

Machine learning has its strengths. It is effective in catching ransomware as-it-happens and detecting unique and new malware files. It is not the sole cybersecurity solution, however. Trend Micro recognizes that machine learning works best as an integral part of security products alongside other technologies.

Trend Micro takes steps to ensure that false positive rates are kept at a minimum. Employing different traditional security techniques at the right time provides a check-and-balance to machine learning, while allowing it to process the most suspicious files efficiently.

A multi-layered defense to keeping systems safe — a holistic approach — is still what’s recommended. And that’s what Trend Micro does best.

  • Generative Malware Detection
  • Ahead of the Curve: A Deeper Understanding of Network Threats Through Machine Learning
  • Web Defacement Campaigns Uncovered: Gaining Insights From Deface Pages Using DefPloreX-NG
  • Exploring the Long Tail of (Malicious) Software Downloads
  • An In-Depth Analysis of Abuse on Twitter
  • Automatic Classifying of Mac OS X Samples
  • Automatic Extraction of Indicators of Compromise for Web Applications
  • Machine Learning and Next-Generation Intrusion Prevention System (NGIPS)
  • Targeted Attacks Detection With SPuNge
  • TLSH – A Locality Sensitive Hash
  • Using Machine Learning to Stop Exploit Kits In-line in Real-Time: Statistical Models Identify Obfuscated HTML
  • Using Randomization to Attack Similarity Digests
  • Real-Time Detection of Malware Downloads via Large-Scale URL-File-Machine Graph Mining

Why Project-Based Learning Trend Is a New Range in Education?

by Phuong Thuy | Jul 4, 2020 | eLearning

“Knowledge is consequence of experience”, said Swiss Psychologist Jean Piaget. That’s so true! “Learning by doing” is the quickest way for us to absorb civilized achievements of humanity. In fact, people have to face many problems in the real world everyday. And solving real-world issues is development’s base. So, if we prepare learners for success in life, we need to prepare them for learning through project-based world. In that journey, we cannot miss Project-Based Learning trend, an approach that connects learners to the real world.

This blog post will give you a closer look at Project-Based Learning and its benefits to explain why Project-Based Learning trend is a new range in education.

The Definition of Project-Based Learning

In general, Project-Based Learning or Problem-Based Learning (PBL) is a learner-centered teaching method. It gives learners the opportunity to expand knowledge base and develop skills through doing the project to solve the problems they may face in reality. These projects are usually too large and complex for one learner to work alone. Thus, PBL tends to encourage teamwork. Learners have to work in pairs or in groups, conduct research, analyze information and draw their own conclusions. As a result, they develop deep content knowledge as well as multi-skills in this modern world.

As we can see, PBL changed traditional teaching, passive learning and rote memorization. This approach motivates learners to participate actively in the learning process. It is better rather than just cramming the information to pass the final test. Plus, PBL is not a bad choice to make your eLearning more interactive and empowering your learners.

The Advantages of Project-Based Learning

In fact, PBL is more than just doing projects. The project is the vehicle for conveying the important knowledge and skills learners need to learn. In other words, a teacher plays the role as a facilitator to instruct and monitor learners in online classroom. And learners become active digital researchers or assessors of their own learning from the project making processes.

So, what benefits do PBL trend have to make it become a new range in education? Keep reading to find out of them.

1. Connecting Learners to the Real-life Context

In the land of education, putting knowledge into practice is one of the most important tasks of any learner. Clearly, reading documents or books is always easier than practicing. For example, it is easy as pie to read books or articles about living positively instead of actually practicing positive thinking all of the time. Now, in PBL trend, learners have to face real world situation simulated in the forms of the projects. To find the problem’s solution, learners need to ask the right questions . Then, finding the relevant information, conducting the survey about actual situation and analyzing the data.

For example, we have the project’s topic Protect the Environment with the driving question: How to reduce using plastic bags? It means that learners have to conduct a survey about the way their local residents use the plastic bags, their harmful effects and how to cut down on using them. That way, learners are connected to their real life, not just bookworms. As a result, learners absorb knowledge while doing and keep the positive attitudes toward education . Firstly, they will work individually to get the data. Next, learners can work together in an online environment to share information, discuss and complete the project. T his environment provides additional flexibility in time and space. This two highly-valued resources often limited in face-to-face classroom.

2. Developing 21st Century Skills

Preparing learners for the world is not an easy task for any educator. There is no learner in the history of education is like today’s modern learner. As today’s fast-paced world quickly develops, it has become increasingly proof that children must develop a set of skills they may be demanded in college and work. These skills are called 21st Century Skills and they can be acquired via PBL trend.

When doing a project, learners have the opportunity to think outside the box. Simultaneously, working with others, achieving an agreement, learning how to effectively convey ideas among different personality types and more. Plus, to solve the problem, learners’ll have to understand the facts, analyze the statistics and summarize collected data. To do well, learners have to use the computer competently. In other words, PBL trend helps learners develop skills for living in a knowledge-based, highly technological society. As a result, learners can solve every eLearning courses’ tasks in the future with ease. What’s more, learners become wiser, adapt to the world more effectively.

3. Raising Learners Voice and Choice

Raising learners voice and choice is a significant benefit of PBL trend. Undoubtedly, all of us have Self-actualization Needs, according to Abraham Maslow . That explains why people always desire to express their opinion to others. If learners aren’t able to use their judgment when solving a problem and answering a driving question, the project just feels like doing an exercise. In PBL courses, learners can control over many aspects of the project, from the questions they make, the time they manage, the resources they will use to find answers to their questions, to the tasks and roles they will take on as team members, the product they will create.

For example, if learners are interested in environmental problems, they can select the theme of the project such as protecting water resources, protecting wildlife being extinct or reducing air pollution. The online environment proves another strong point in that it allows the possibility of producing public results, such as a video, a presentation, a game or even an article. This way, learners’ work will be seen by many others than they are in the traditional classroom.

4. Evaluating Learners’ Outcome More Accurate

As said earlier, learners have to use many skills to do a project. Thus, facilitators are able to assess learners’ capabilities to observe, compile, analyze and summarize the data. In other words, facilitators have the greater chance to evaluate learners than essays or exams in the traditional classroom. The result of online classroom will become more meaningful when it is done for learner selves, not only for the teacher or the test.

“We do not learn from experience. We learn from reflecting on experience” (John Dewey). Throughout a PBL online course, it can reflect on what learners have learned, how they’ve learned and why they’ve learned. Plus, facilitators can give informative feedback for each learners’ project to help them do better in the future.

Final word

On the whole, the main advantages mentioned above provide a good case for the implementation of Project-Based Learning trend. That’s why Project-Based Learning trend is a powerful teaching method and becomes widely used in both real and virtual classes. Are you ready to take part in any PBL online course? Effective PBL in the online classroom relies on teacher ability to design high-quality online content. Remember that you always have ActivePresenter companion with you. Download ActivePresenter today, catch PBL trend and design your own PBL course. Hope you will have great experiences with our eLearning authoring software. Visit our blog regularly to update more new e-Learning trends: Gamification , Blended Learning and more.

Machine Learning

What Is Machine Learning?

Machine learning is more than just a buzz-word — it is a technological tool that operates on the concept that a computer can learn information without human mediation. It uses algorithms to examine large volumes of information or training data to discover unique patterns. This system analyzes these patterns, groups them accordingly, and makes predictions. With traditional machine learning, the computer learns how to decipher information as it has been labeled by humans — hence, machine learning is a program that learns from a model of human-labeled datasets.

It is unique in how it becomes, in a way, intuitive. Through repetition, it learns by inference without a need to be deliberately programmed each and every time. However, a caveat: Machine learning can make mistakes and appropriate caution should be used. 1

Machine learning proves to be useful especially in today’s big data world. We come into contact with machine learning on a daily basis. It supports technologies such as identifying voice commands on our phones, recommending which songs to listen to on Spotify or which items to purchase next on Amazon, and even determining the fastest way to reach your destination on Waze, to name a few.

How Machine Learning Can Help Businesses

Machine Learning helps protect businesses from cyberthreats. However, it works best as part of a multilayered security solution.

Machine learning is also used in healthcare, helping doctors make better and faster diagnoses of diseases, and in financial institutions, detecting fraudulent activity that doesn’t fall within the usual spending patterns of consumers.

Machine Learning Algorithm Types

Supervised Machine Learning

The traditional machine learning type is called supervised machine learning, which necessitates guidance or supervision on the known results that should be produced. In supervised machine learning, the machine is taught how to process the input data. It is provided with the right training input, which also contains a corresponding correct label or result. From the input data, the machine is able to learn patterns and, thus, generate predictions for future events. A model that uses supervised machine learning is continuously taught with properly labeled training data until it reaches appropriate levels of accuracy.

Unsupervised Machine Learning

Unsupervised machine learning, through mathematical computations or similarity analyses, draws unknown conclusions based on unlabeled datasets.An unsupervised machine learning model learns to find the unseen patterns or peculiar structures in datasets. In unsupervised machine learning, the machine is able to understand and deduce patterns from data without human intervention. It is especially useful for applications where unseen data patterns or groupings need to be found or the pattern or structure searched for is not defined. This also refers to clustering.

Instance-Based Machine Learning

Another type is instance-based machine learning, which correlates newly encountered data with training data and creates hypotheses based on the correlation. To do this, instance-based machine learning uses quick and effective matching methods to refer to stored training data and compare it with new, never-before-seen data. It uses specific instances and computes distance scores or similarities between specific instances and training instances to come up with a prediction. An instance-based machine learning model is ideal for its ability to adapt to and learn from previously unseen data.

Machine Learning and Cybersecurity

The emergence of ransomware has brought machine learning into the spotlight, given its capability to detect ransomware attacks at time zero.

Evolution is malware’s game. A few years ago, attackers used the same malware with the same hash value — a malware’s fingerprint — multiple times before parking it permanently. Today, these attackers use some malware types that generate unique hash values frequently. For example, the Cerber ransomware can generate a new malware variant — with a new hash value every 15 seconds.This means that these malware are used just once, making them extremely hard to detect using old techniques. Enter machine learning. With machine learning’s ability to catch such malware forms based on family type, it is without a doubt a logical and strategic cybersecurity tool.

Machine learning algorithms are able to make accurate predictions based on previous experience with malicious programs and file-based threats. By analyzing millions of different types of known cyber risks, machine learning is able to identify brand-new or unclassified attacks that share similarities with known ones.

From predicting new malware based on historical data to effectively tracking down threats to block them, machine learning showcases its efficacy in helping cybersecurity solutions bolster overall cybersecurity posture.

And though machine learning has become a major talking point in cybersecurity fairly recently, it has already been an integrated tool in Trend Micro’s security solutions since 2005 — way before the buzz ever started.

How Does Trend Micro Use Machine Learning?

Machine learning is a key technology in the Trend Micro™ XGen™ security, a multi-layered approach to protecting endpoints and systems against different threats, blending traditional security technologies with newer ones and using the right technique at the right time.

For over a decade, Trend Micro has been harnessing the power of machine learning to eliminate spam emails, calculate web reputation, and chase down malicious social media activity. Trend Micro continuously develops the latest machine learning algorithms to analyze large volumes of data and predict the maliciousness of previously unknown file types.

A Connected Threat Defense for Tighter Security

Learn how Trend Micro’s Connected Threat Defense can improve an organizations security against new, 0-day threats by connecting defense, protection, response, and visibility across our solutions. Automate the detection of a new threat and the propagation of protections across multiple layers including endpoint, network, servers, and gateway solutions.

Trend Micro’s Machine Learning Milestones

Year Machine Learning Milestone

As early as 2005, Trend Micro has utilized machine learning to combat spam emails via the Trend Micro Anti Spam Engine (TMASE) and Hosted Email Security (HES) solutions.

To accurately assign reputation ratings to websites (from pornography to shopping and gambling, among others), Trend Micro has been using machine learning technology in its Web Reputation Services since 2009.

Trend Micro’s Script Analyzer, part of the Deep Discovery™ solution, uses a combination of machine learning and sandbox technologies to identify webpages that use exploits in drive-by downloads.

With the goal of helping law enforcement with cybercriminal investigations dealing specifically with targeted attacks, Trend Micro has developed SPuNge, a system that uses a combination of clustering and correlation techniques to “identify groups of machines that share a similar behavior with respect to the malicious resources they access and the industry in which they operate.”

Trend Micro developed Trend Micro Locality Sensitive Hashing (TLSH), an approach to Locality Sensitive Hashing (LSH) that can be used in machine learning extensions of whitelisting. It generates hash values that can be analyzed for whitelisting purposes. In 2020, Trend Micro open sourced TLSH via GitHub to encourage proactive collaboration.

In 2020, Trend Micro successfully employed machine learning in its Mobile App Reputation Service (MARS) for both iOS and Android, as well as in its mobile security products (Trend Micro™ Mobile Security for Android™ for end users and Trend Micro™ Mobile Security for Enterprise for organizations).

Machine learning algorithms enable real-time detection of malware and even unknown threats using static app information and dynamic app behaviors. These algorithms used in Trend Micro’s multi-layered mobile security solutions are also able to detect repacked apps and help capacitate accurate mobile threat coverage in the TrendLabs Security Intelligence Blog.

Since 2020, Trend Micro has topped the AV Comparatives’ Mobile Security Reviews. The machine learning initiatives in MARS are also behind Trend Micro’s mobile public benchmarking continuously being at a 100 percent detection rate — with zero false warnings — in AV-TEST’s product review and certification reports in 2020.

Predictive Machine Learning Engine was developed in 2020 and is a key part of the Trend Micro XGen solution. It uses two types of machine learning: pre-execution machine learning that identifies malicious files based on the file structure, and run-time machine learning for files that execute malicious behavior.

AV-TEST featured Trend Micro Antivirus Plus solution on their MacOS Sierra test , which aims to see how security products will distinguish and protect the Mac system against malware threats. Trend Micro’s product has a detection rate of 99.5 percent for 184 Mac-exclusive threats, and more than 99 percent for 5,300 Windows test malware threats. It also has an additional system load time of just 5 seconds more than the reference time of 239 seconds.

Overall, at 99.5 percent, AV-TEST reported that Trend Micro’s Mac solution “provides excellent detection of malware threats and is also well recommended” with its minimal impact on system load (something more than 2 percent).

On February 7, 2020, Trend Micro further solidified its position at the forefront of machine learning technology — by being the first standalone next-generation intrusion prevention system (NGIPS) vendor to use machine learning in detecting and blocking attacks in-line in real time.

The patent-pending machine learning capabilities are incorporated in the Trend Micro™ TippingPoint® NGIPS solution, which is a part of the Network Defense solutions powered by XGen security.

Through advanced machine learning algorithms, unknown threats are properly classified to be either benign or malicious in nature for real-time blocking — with minimal impact on network performance.

Trend Micro’s Dual Approach to Machine Learning

Machine learning at the endpoint, though relatively new, is very important, as evidenced by fast-evolving ransomware’s prevalence. This is why Trend Micro applies a unique approach to machine learning at the endpoint — where it’s needed most.

Pre-execution machine learning, with its predictive ability, analyzes static file features and makes a determination of each one, blocks off malicious files, and reduces the risk of such files executing and damaging the endpoint or the network. Run-time machine learning, meanwhile, catches files that render malicious behavior during the execution stage and kills such processes immediately.

Both machine learning techniques are geared towards noise cancellation, which reduces false positives at different layers.

A high-quality and high-volume database is integral in making sure that machine learning algorithms remain exceptionally accurate. Trend Micro™ Smart Protection Network™ provides this via its hundreds of millions of sensors around the world. On a daily basis, 100 TB of data are analyzed, with 500,000 new threats identified every day. This global threat intelligence is critical to machine learning in cybersecurity solutions.

The Trend Micro™ XGen page provides a complete list of security solutions that use an effective blend of threat defense techniques — including machine learning.

Machine Learning vs. the Hype

How Is Big Data Relevant to Machine Learning?

The prevalence of the internet and the Internet of Things (IoT) — from devices, smart homes, and connected cars to smart cities — has made available large amounts of digital data that are generated on a daily basis, all available for collecting, analyzing, and utilizing.

These large amounts of data is aptly called big data. It is a combination of structured data (searchable by algorithms and databases) and unstructured data (hard or impossible to search via machine algorithm, such as macro files, emails, web searches, and images) that continue to grow at a highly accelerated pace. In fact, it is predicted that by 2025, 180 zettabytes (180 trillion gigabytes) of data will be generated.

Big data is being harnessed by enterprises big and small to better understand operational and marketing intelligences, for example, that aid in more well-informed business decisions. However, because the data is gargantuan in nature, it is impossible to process and analyze it using traditional methods.

Machine learning plays a pivotal role in addressing this predicament. Machine learning algorithms enable organizations to cluster and analyze vast amounts of data with minimal effort. But it’s not a one-way street — Machine learning needs big data for it to make more definitive predictions. Essentially, big data is necessary for machine learning to exist.

An understanding of how data works is imperative in today’s economic and political landscapes. And big data has become a goldmine for consumers, businesses, and even nation-states who want to monetize it, use it for power, or other gains.

The world of cybersecurity benefits from the marriage of machine learning and big data. As the current cyberthreat environment continues to expand exponentially, organizations can utilize big data and machine learning to gain a better understanding of threats, determine fraud and attack trends and patterns, as well as recognize security incidents almost immediately — without human intervention.

Cognizant of these benefits, Trend Micro has partnered up with Hadoop developers to help improve its security model. Hadoop is a popular big data framework used by giant tech companies such as Amazon Web Services, IBM, and Microsoft.

Are Data Mining and Machine Learning the Same?

Despite their similarities, data mining and machine learning are two different things. Both fall under the realm of data science and are often used interchangeably, but the difference lies in the details — and each one’s use of data.

Data mining is defined as the process of acquiring and extracting information from vast databases by identifying unique patterns and relationships in data for the purpose of making judicious business decisions. Data mining is effectively used for different purposes. A clothing company, for example, can use data mining to learn which items their customers are buying the most, or sort through thousands upon thousands of customer feedback, so they can adjust their marketing and production strategies.

Machine learning, on the other hand, uses data mining to make sense of the relationships between different datasets to determine how they are connected. Machine learning uses the patterns that arise from data mining to learn from it and make predictions.

To simplify, data mining is a means to find relationships and patterns among huge amounts of data while machine learning uses data mining to make predictions automatically and without needing to be programmed.

Is Machine Learning a Security Silver Bullet?

Machine learning is a useful cybersecurity tool — but it is not a silver bullet. While others paint machine learning as a magical black box or a complicated mathematical system that can teach itself to generate accurate predictions from data with possible false positives, we at Trend Micro view it as one valuable addition to other techniques that make up our multi-layer approach to security.

Machine learning has its strengths. It is effective in catching ransomware as-it-happens and detecting unique and new malware files. It is not the sole cybersecurity solution, however. Trend Micro recognizes that machine learning works best as an integral part of security products alongside other technologies.

Trend Micro takes steps to ensure that false positive rates are kept at a minimum. Employing different traditional security techniques at the right time provides a check-and-balance to machine learning, while allowing it to process the most suspicious files efficiently.

A multi-layered defense to keeping systems safe — a holistic approach — is still what’s recommended. And that’s what Trend Micro does best.

  • Ahead of the Curve: A Deeper Understanding of Network Threats Through Machine Learning
  • Web Defacement Campaigns Uncovered: Gaining Insights From Deface Pages Using DefPloreX-NG
  • Exploring the Long Tail of (Malicious) Software Downloads
  • An In-Depth Analysis of Abuse on Twitter
  • Automatic Classifying of Mac OS X Samples
  • Automatic Extraction of Indicators of Compromise for Web Applications
  • Machine Learning and Next-Generation Intrusion Prevention System (NGIPS)
  • Targeted Attacks Detection With SPuNge
  • TLSH – A Locality Sensitive Hash
  • Using Machine Learning to Stop Exploit Kits In-line in Real-Time: Statistical Models Identify Obfuscated HTML
  • Using Randomization to Attack Similarity Digests
  • Real-Time Detection of Malware Downloads via Large-Scale URL-File-Machine Graph Mining
Best Binary Options Brokers 2020:
  • Binarium
    Binarium

    The Best Binary Options Broker 2020!
    Good for Beginners!
    Free Education + Free Demo Account!
    Get Your Sign-Up Bonus Now!

  • Binomo
    Binomo

    Only For Experienced Traders!

Like this post? Please share to your friends:
Binary Options Trading
Leave a Reply

;-) :| :x :twisted: :smile: :shock: :sad: :roll: :razz: :oops: :o :mrgreen: :lol: :idea: :grin: :evil: :cry: :cool: :arrow: :???: :?: :!:

Year Machine Learning Milestone