<?xml version="1.0"?>
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   <channel>
      <title>Machine Learning by Nida Akram/TCHR/ELCSB</title>
      <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0</link>
      <description>Write in your own words how machine learning is used in following applications</description>
      <language>en-us</language>
      <pubDate>2021-09-03 05:33:03 UTC</pubDate>
      <lastBuildDate>2025-10-21 00:44:47 UTC</lastBuildDate>
      <webMaster>hello@padlet.com</webMaster>
      <image>
         <url></url>
      </image>
      <item>
         <title>Ibrahim</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714745815</link>
         <description><![CDATA[<div>It uses machine learning by comparing the email with pre-stored models of safe or SPAM emails. As it runs through, it detects whether it is closer to a safe email or a SPAM email</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 06:26:27 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714745815</guid>
      </item>
      <item>
         <title>M.Umar Waqas 10C-D</title>
         <author>umar6693</author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714748160</link>
         <description><![CDATA[<div>This is done using <strong>collaboration filtering</strong> in which if two customers have the same shopping behaviours, they are shown a similar type of shopping list to fit their interests or needs which the machine learns with its past experiences of other customers.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 06:28:03 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714748160</guid>
      </item>
      <item>
         <title>Ammar Tahir</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714750311</link>
         <description><![CDATA[<div>Machine learning in spam works by collecting data in the email such as its contents, sender name and headers. It removes stop words (those that connect sentences) and punctuation but keep the keywords which leaves only relevant data. Then this data is scanned and certain words/phrases commonly used in spam such as lottery, earn and other words help indicate the incoming email is likely spam.<br><br>This learning model is build and tested to ensure it learns what emails are spam by previous experiences and then the model is finally published live.<br><br></div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 06:29:51 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714750311</guid>
      </item>
      <item>
         <title>wali</title>
         <author>wali0047</author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714750444</link>
         <description><![CDATA[<div>it uses machine learning through carrying out a cleaning process in emails that cancels or erases elements that dont carry relevent info like " and,like,with and punctuations".<br>than scans through the rest of the data to see if words like "lottery,win,full,prize etc" are used ,if this requirement is fulfilled it is likely that the said email is SPAM</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 06:29:59 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714750444</guid>
      </item>
      <item>
         <title>Talha Amin 10C-D</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714754012</link>
         <description><![CDATA[<div>uses machine learning comparing email with pre stored models and spam emails. when it runs it sees whether it is a spam email or safe email.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 06:33:05 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714754012</guid>
      </item>
      <item>
         <title>Ammar Tahir</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714754138</link>
         <description><![CDATA[<div>Machine learning in recognizing user buyer history works via collaboration filtering, which is the process of predicting a new customer's buying habit by comparing it with other buyers. As such, if person A buys a book and a workbook, 2 weeks later Person B may also buy the same book, and the machine will suggest the workbook due to its past experiences and linking.<br>This is particularly common in creating music playlists.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 06:33:11 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714754138</guid>
      </item>
      <item>
         <title>Rayan Anjum 10 C-D</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714755762</link>
         <description><![CDATA[<div>Machine learning collects the data in an email and it detects words which are often used in spam emails, once it has catogerized  an email as spam it will filter it out ny deleting it</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 06:34:33 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714755762</guid>
      </item>
      <item>
         <title>Ibrahim</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714756615</link>
         <description><![CDATA[<div>Machine learning is able to filter through your recent buying history, seeing which category each items fits in. It is then able to link all your recently purchased items, then it will recommend to you something which also falls in that category. Or some browsers are also able to tell what others users next bought who originally bought this</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 06:35:14 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714756615</guid>
      </item>
      <item>
         <title>Talha Amin</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714759437</link>
         <description><![CDATA[<div>done using collaboration filtering in which two customers have same shopping behaviours , they rae shown a similar type of shopping thier interest or needs</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 06:37:11 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714759437</guid>
      </item>
      <item>
         <title>Ibrahim</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714766440</link>
         <description><![CDATA[<div>Machine learning is able to detect fraudulent activity by comparing the new action with the base examples stored in it already. First it collects the data. Then it will separately analyze all components of the data, comparing it with its training for tracing fraudulent data, that teaches it how to recognize faulty stuff</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 06:42:00 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714766440</guid>
      </item>
      <item>
         <title>Ammar Tahir</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714767829</link>
         <description><![CDATA[<div>Machine learning in detection of fraudulent activity works by gathering data from surveys or the internet. These are used to detect multiple factors such as cred card fraud, information on customers and shopping habits. Redundant data is removed so that only key words remain, this has to be done carefully.<br>Then the algorithm is trained to detect fraud. The model is tested with known data and known outcomes and is modified if it does not satisfy requirements.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 06:43:07 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714767829</guid>
      </item>
      <item>
         <title>Machine learning is used to differentiate spam from a real email and it is done so by scanning through the email and tries to find words like win, lottery and earn. The mails with such words are sent to spam</title>
         <author>faizan3536</author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714768169</link>
         <description><![CDATA[]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 06:43:24 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714768169</guid>
      </item>
      <item>
         <title>Abubakar Masood 10CD</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714770144</link>
         <description><![CDATA[<div>The machine learning in this application stores data from previous spam emails by taking the keywords like lottery as data and when some spam email is approached they compare the keywords if many of them are matched it gets to know it is a spam email.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 06:44:52 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714770144</guid>
      </item>
      <item>
         <title>Machine learning collects data from your previous buying history and scan through the internet find you the related product in the most suitable price </title>
         <author>faizan3536</author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714772674</link>
         <description><![CDATA[]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 06:46:51 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714772674</guid>
      </item>
      <item>
         <title>Rayan Anjum 10 C-D</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714774366</link>
         <description><![CDATA[<div>It is completed using collaboration filtering which is a process in which machine learning is used to determine what a customer might like based on a previous customers opinion.<br>If one person buys a specific cd and some health care products and the next person buys the same cd. The machine learning process will recommend buying the same health products as the first person.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 06:48:18 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714774366</guid>
      </item>
      <item>
         <title>Abubakar Masood 10CD</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714775744</link>
         <description><![CDATA[<div>This happens when the machine learning stores data of two similar customers who have similar shopping behaviours. The data is compared and suggestions are given to the customers.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 06:49:23 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714775744</guid>
      </item>
      <item>
         <title>Talha Amin 10C-D</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714779668</link>
         <description><![CDATA[<div>it is able to detect fraudluent activity by activity by comparing the new action with base examples stored. it will then separately analyze all components of the data, comparing with training for tracing fraudulent data  , that teaches hoe to find faulty things</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 06:52:31 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714779668</guid>
      </item>
      <item>
         <title>Rayan Anjum 10 C-D</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714780332</link>
         <description><![CDATA[<div>Data is gathered from surveys, the web and real life examples of fraudulent activity. It is given to a machine along with data on how things could be fraudulent for example; a person spends a large sum on jewlery. The model is tested and is modified if some acts of fraud are not detectable.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 06:53:05 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714780332</guid>
      </item>
      <item>
         <title>Abubakar Masood 10CD</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714781344</link>
         <description><![CDATA[<div>In a fraudlet activity the machine learning check the previous data of billing that tells it the things that the owner buys from the card. It then compares any unsusual activity with the previous data like if a person does not like something but a transaction is done on that it is not usuall and the machine learning due to this activity gets to know this is a fraud.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 06:53:57 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714781344</guid>
      </item>
      <item>
         <title>Abdul Aziz Waseem 10C-C</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714787870</link>
         <description><![CDATA[<div>Machine learning is used in this application by comparing emails with pre stored models and spam emails. When it runs through, it sees whether it is closer to a spam email or safe email.&nbsp;</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 06:59:34 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714787870</guid>
      </item>
      <item>
         <title>M.Fahad 10 cd</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714839783</link>
         <description><![CDATA[<div>First an algorithm is used to collect data then the machine carries out  a cleaning process in which it focuses on keywords like “lottery”, “full refund” etc. these words are mostly used in spam emails, indicating that this email is likely a spam email and the email is then added to the spam folder and is tested live.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 07:43:19 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714839783</guid>
      </item>
      <item>
         <title>M.Fahad 10 CD</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714844637</link>
         <description><![CDATA[<div>This comes from collaboration filtering which is, that customers with similar shopping behaviour are compared ex. if customer A buys a jazz cd and a roman history book and customer B buys a jazz cd the machine will recommend customer B to buy a roman history book since the taste of both the customers in shopping is similar.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 07:48:06 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714844637</guid>
      </item>
      <item>
         <title>M.Fahad 10 CD</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714851346</link>
         <description><![CDATA[<div>data is gathered by web scraping ex, info about customer ,and to detect credit card fraud.Then the redundant data is removed carefully.<br>Then a model is built based up on learning from the data and it can now be used to detect fraud.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 07:54:09 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714851346</guid>
      </item>
      <item>
         <title>👑Shaheer (●&#39;◡&#39;●) Ahmed👑</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714969957</link>
         <description><![CDATA[<div><strong><em>First of all, when an Email is checked via machine learning it scans for connecting words like or, and, but, etc. Then it deletes these words and makes it a simple paragraph. Then the Email is again checked for words like lottery, win, prize , full, etc. If these words are found then it is considered to be a SPAM Email and then machine learning informs the user about it after that if any kind of action which machine learning doesn't know takes place the machine learning takes notice adopts that method or action.</em></strong></div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 09:52:34 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714969957</guid>
      </item>
      <item>
         <title>Muhammad Faaiz Umair 10C-D</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714984722</link>
         <description><![CDATA[<div>A machine is trained using a training data base. This database trains it according to incidents regarding spam emails. When a receiver receives an email, the machine first figures out the structure and presentation of the email. Next, it reduces the content in the email by eliminating the stop words and punctuations. Finally, it searches for commonly used words in spam emails e.g. lottery, won, earn, money and more.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 10:10:19 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714984722</guid>
      </item>
      <item>
         <title>👑Shaheer (●&#39;◡&#39;●) Ahmed👑</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714988747</link>
         <description><![CDATA[<div><strong><em>In this application machine learning gathers data from the database that what the user buys and how many times he or she buys off the online stores for example if a user buys a shirt of his size and style of an online store more than once or twice then the machine learning checks the database and buyers history for this type of relevant information and makes sperate column or space for that person called ''recommended'' on that online website which includes the stuff which user likes.</em></strong></div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 10:15:32 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1714988747</guid>
      </item>
      <item>
         <title>It first collects previous data, analyzes it and then compares it with the new data and by doing so it detects if you bought the expensive product or not, if it thinks you were not the one buying it, the scammer cannot buy it</title>
         <author>faizan3536</author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1715074861</link>
         <description><![CDATA[]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 11:52:18 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1715074861</guid>
      </item>
      <item>
         <title>Muhammad Faaiz Umair 10C-D</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1715078275</link>
         <description><![CDATA[<div>In online shopping websites, machines play the roles of giving us suggestions. It does that by recording items previously purchased by other people. When we are new to an online shopping website, it gives us the suggestions from earlier purchases. Simply, it records earlier purchases and suggests new accounts. The cookies play the next role of storing our details and give suggestions to us when already logged in. The cookies record our purchases and the machine passes them on to new accounts.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 11:55:41 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1715078275</guid>
      </item>
      <item>
         <title>Muhammad Faaiz Umair 10C-D</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1715095871</link>
         <description><![CDATA[<div>For detection of fraudulent activity, machines are trained using algorithms involving real purchasing behavior of the user. First, it conducts a survey and then redundant the data which is a very important process. They are tested and modified if they do not follow given criteria</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-03 12:09:42 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1715095871</guid>
      </item>
      <item>
         <title>M.Umar Waqas 10C-D </title>
         <author>umar6693</author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1716542868</link>
         <description><![CDATA[<div>First the data in the emails is collected&nbsp; through a machine learning algorithm. Then all the data is cleaned by removing the <strong>stop words </strong>such as 'the', and 'a' leaving behind only the important data behind.&nbsp;Certain words or phrases for example, lottery, earn, full-refund, are detected which tell that this email is most likely to be a spam email. The machine learning system learns from past emails which are known to be spam.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-04 11:39:49 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1716542868</guid>
      </item>
      <item>
         <title>M.Umar Waqas 10C-D </title>
         <author>umar6693</author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1716591543</link>
         <description><![CDATA[<div>First of all data is gathered through a survey or web- scraping. Then the unnecessary data is removed but this needs to be done very carefully to ensure that the possibility of wrong predictions is low. The algorithm is trained through real customer behaviours and then based on that learning a model is built which allows the machine to detect fraudulent activity for example, the spending of an unusual amount of money or on a piece of jewellery, it is most likely to be a fraud.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-04 13:10:14 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1716591543</guid>
      </item>
      <item>
         <title>Ehsaanullah XC D</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1717198176</link>
         <description><![CDATA[<div>The machine learning in this application stores data from previous spam emails by taking the keywords like lottery as data and when some spam email is approached they compare the keywords if many of them are matched it gets to know it is a spam email.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-05 07:22:57 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1717198176</guid>
      </item>
      <item>
         <title>Ehsaanullah XC D</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1717198849</link>
         <description><![CDATA[<div>Machine learning in recognizing user buyer history works via collaboration filtering, which is the process of predicting a new customer's buying habit by comparing it with other buyers. As such, if person A buys a book and a workbook, 2 weeks later Person B may also buy the same book, and the machine will suggest the workbook due to its past experiences and linking.<br>This is particularly common in creating music playlists.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-05 07:24:08 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1717198849</guid>
      </item>
      <item>
         <title>Ehsaanullah XC D</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1717200014</link>
         <description><![CDATA[<div>Machine learning is able to detect fraudulent activity by comparing the new action with the base examples stored in it already. First it collects the data. Then it will separately analyze all components of the data, comparing it with its training for tracing fraudulent data, that teaches it how to recognize faulty stuff</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-05 07:25:57 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1717200014</guid>
      </item>
      <item>
         <title>Hadi Ali</title>
         <author>hadi6494</author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1718732778</link>
         <description><![CDATA[<div>Algorithms use pre-defined rules in the form of a regular expression to give a score to the messages present in the e-mails. Based on the scores generated, they segregate emails into spam non-spam categories.Algorithms extract the incoming mails' features and create a multi-dimensional space vector and draw points for every new instance. Based on the KNN algorithm, these new points get assigned to the closest class of spam and non-spam.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-06 06:54:27 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1718732778</guid>
      </item>
      <item>
         <title>Hadi Ali</title>
         <author>hadi6494</author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1718734874</link>
         <description><![CDATA[<div>This is done using <strong>collaboration filtering</strong> in which if two customers have the same shopping behaviours, they are shown a similar type of shopping list to fit their interests or needs which the machine learns with its past experiences of other customers. The cookies record our purchases and the machine passes them on to new accounts.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-06 06:55:30 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1718734874</guid>
      </item>
      <item>
         <title>Hadi Ali</title>
         <author>hadi6494</author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1718735861</link>
         <description><![CDATA[<div>it is able to detect fraudluent activity by activity by comparing the new action with base examples stored. it will then separately analyze all components of the data, comparing with training for tracing fraudulent data , that teaches hoe to find faulty things.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-06 06:56:02 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1718735861</guid>
      </item>
      <item>
         <title>M.Gillani</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1724892527</link>
         <description><![CDATA[<div>Several studies have been carried out on machine learning techniques and many of these algorithms are being applied in the field of email spam filtering. Examples of such algorithms include Deep Learning, Naïve Bayes, Support Vector Machines, Neural Networks, K-Nearest Neighbour, Rough sets, and Random Forests.<br>These ML techniques have the capacity to learn and identify spam mails and phishing messages by analyzing loads of such messages throughout a vast collection of computers. Since machine learning have the capacity to adapt to varying conditions, Gmail and Yahoo mail spam filters do more than just checking junk emails using pre-existing rules. They generate new rules themselves based on what they have learnt as they continue in their spam filtering operation.<br><br></div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-08 13:40:55 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1724892527</guid>
      </item>
      <item>
         <title>M.Gillani</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1724902244</link>
         <description><![CDATA[<div>Collaborative filtering is a technique that can filter out items that a user might like on the basis of reactions by similar users. It works by searching a large group of people and finding a smaller set of users with tastes similar to a particular user.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-08 13:43:22 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1724902244</guid>
      </item>
      <item>
         <title>M.Gillani</title>
         <author></author>
         <link>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1724909483</link>
         <description><![CDATA[<div>Machine learning models are able to learn from patterns of normal behavior. They are very fast to adapt to changes in that normal behaviour and can quickly identify patterns of fraud transactions. This means that the model can identify suspicious customers even when there hasn't been a chargeback yet.</div>]]></description>
         <enclosure url="" />
         <pubDate>2021-09-08 13:45:35 UTC</pubDate>
         <guid>https://padlet.com/tchr68019/46bzz5teghdmo6z0/wish/1724909483</guid>
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