Journal article Open Access

Adaptive Prediction of User Interaction based on Deep Learning

Vidhyavani.A; Pooja Gopi; Sushil Ram; Sujay Sukumar


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    "description": "<p>This application starter work in the region of site page expectation is introduced. The structured and actualized model offers customized association by anticipating the client&#39;s conduct from past web perusing history. Those forecasts are a short time later used to streamline the client&#39;s future connections. We propose a Profile-based Interaction Prediction Framework (PIPF), which can illuminate the occasion activated connection expectation issue productively and adequately. In PIPF, we initially change the cooperation sign into a Sliding-window Evolving Graph (SEG) to decrease the information volume and steadily update SEG as the association log develops. At that point, we construct profiles intended to introduce clients&#39; conduct by separating the static and astounding highlights from SEG. The static (separately, astonishing) stress mirrors the normality of clients&#39; conduct (individually, the transient conduct). At the point when an occasion happens, we process the closeness between the event and every competitor connects.</p>", 
    "contributors": [
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        "affiliation": "Publisher", 
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        "name": "Blue Eyes Intelligence Engineering  and Sciences Publication(BEIESP)"
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    "title": "Adaptive Prediction of User Interaction based on  Deep Learning", 
    "license": {
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    "journal": {
      "volume": "9", 
      "issue": "2", 
      "pages": "190-192", 
      "title": "International Journal of Recent Technology and Engineering (IJRTE)"
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    "language": "eng", 
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        "identifier": "2277-3878"
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        "scheme": "handle", 
        "identifier": "B3372079220/2020\u00a9BEIESP"
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    ], 
    "keywords": [
      "Deep learning, gated recurrent unit (GRU), Navigation prediction, user interaction, web applications."
    ], 
    "publication_date": "2020-07-30", 
    "creators": [
      {
        "affiliation": "Computer science, SRM Institute of science and  Technology, Chennai, India,", 
        "name": "Vidhyavani.A"
      }, 
      {
        "affiliation": "Computer science, SRM Institute of science and  Technology, Chennai, India,", 
        "name": "Pooja Gopi"
      }, 
      {
        "affiliation": "Computer science, SRM Institute of science and  Technology, Chennai, India,", 
        "name": "Sushil Ram"
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      {
        "affiliation": "Computer science, SRM Institute of science and  Technology, Chennai, India,", 
        "name": "Sujay Sukumar"
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