What is Text Mining?

Sdílet
Vložit
  • čas přidán 5. 08. 2024
  • Learn more about WatsonX: ibm.biz/BdPuQc
    What is text mining?: ibm.biz/What_Is_Text_Mining
    Let’s create data fabric instead of data silos : ibm.biz/Data_Fabric
    Did you know that most data is text and completely free-form? This unstructured data defies simple analysis, which means the potential insights it offers are lost to your business. Text mining techniques can help. They transform unstructured text into a structured format to identify meaningful patterns and new insights.
    Watch master inventor Martin Keen explain in his usual "techumorous" (technical + humorous) way how your enterprise could benefit from text mining.
    Download a free AI ebook: ibm.biz/Free-Ebook_For_Me
    Get started for free on IBM Cloud: ibm.biz/Free_Cloud_For_Me
    Subscribe to see more videos like this in the future → ibm.biz/subscribe-now
    #AI #Software #ITModernization #DataFabric #TextMining #lightboard

Komentáře • 25

  • @niitnahuja8793
    @niitnahuja8793 Před rokem

    I have recently started learning in the field of data science and this explanation of your increased my interest and determination to continue in it. You made the explanation amazing.

  • @samaradryburgh
    @samaradryburgh Před rokem +4

    Brilliant video - so well explained and really engaging to watch. A great way to supplement my learning :)

  • @richasinh
    @richasinh Před rokem

    Thank you very much for great clarity of concept and neat presentation !! 🙏😊

  • @justwiredme
    @justwiredme Před rokem

    Thank you I enjoyed and had fun how you explained it

  • @cvats9645
    @cvats9645 Před 4 měsíci

    I have a presentation tomorrow on text mining. This really helped me.

  • @vijaypottumuthu
    @vijaypottumuthu Před 2 lety +4

    Nicely explained!

  • @danabmoore
    @danabmoore Před rokem +2

    Nice overview!

  • @farhadnikhashemi8681
    @farhadnikhashemi8681 Před rokem

    brilliant thanks

  • @sruthia134
    @sruthia134 Před rokem

    The video was very clear and precise for me!!
    Can you please cover more on the tasks involved in text analytics? i.e., Lexical, Syntactical, Semantic, Pragmatic, Discourse analysis?

  • @BryanFrias-gk7ob
    @BryanFrias-gk7ob Před měsícem

    I would like to know a practical case of use about text mining in the industry (maintenance area)

  • @hiii6478
    @hiii6478 Před 10 měsíci +1

    I liked it

  • @omkarthete9305
    @omkarthete9305 Před rokem

    Sir can you share some information abt Mobile Analytics in upcoming video

  • @standardname4723
    @standardname4723 Před rokem

    Brilliant ASMR

  • @Flankymanga
    @Flankymanga Před 2 lety +2

    What tools are out there that i would be able to try text mining?

  • @ericmcnally5128
    @ericmcnally5128 Před 10 měsíci

    I think you should cover the ways that text mining for themes using a [keyword type] + [sentiment type] approach can be applied to major nodes in directional graph representations of online discussion. Simple graphing can tell you who is a bot, but applied analysis of the rest allows you to easily profile a node and sometimes identify malicious accounts waging information warfare on behalf of hostile state actors. The information space is a primary attack vector for those who wish to undermine democratic societies.

  • @MegalithicAncestry
    @MegalithicAncestry Před rokem +2

    I want to learn how to mirror writing

  • @101RealTalker
    @101RealTalker Před rokem

    Great, now how can I apply this to a body of text totaling 2 million words? Right across 900 + files, all geared towards one project?

    • @ericmcnally5128
      @ericmcnally5128 Před 10 měsíci

      Depends on the project goals. I would start by defining a dictionary of themes or categories you expect to find in the text. Let\s say the project is food related. One theme could be fried food. "Fried", "battered", "Kentucky", "fish & chips", "onion rings", "tempura", "crispy", "panko" could be some of many key terms to flag a paragraph, comment, or whatever unit of partition as involving fried food. From there, you could further divide entries flagged as fried into subcategories of good or bad. First you use an easy general classifer. Words like "disgusting" or "nasty" would automatically be flagged as negative connotation, while terms like "tasty" or "mouth-watering" would be flagged as good. The best part is that this general good/bad keyword set is applicable to all your other food types. But even further, we could make a fried.sentiment keyword set specifically built to pick up anything we may have missed. "greasy" could be neutral, so in fried.sentiment we would have "too greasy" as a negative flag but "greasy goodness" or "nice and greasy" as a positive flag. You could event assign a scoring mechanism for large documents so that the total number of good/bad flags is tallied. Only when the number of good and bad flags is nearly even would you have to take the time to line by line examine the particular doc.

  • @thomasedwardking7286
    @thomasedwardking7286 Před rokem

    How can this bro write so good on the glassboard 🙃

  • @fortnitefortnite0
    @fortnitefortnite0 Před 3 měsíci

    I do not believe the shirt story is real I think he made it up to fit with the video