Interest Level Prediction in Rental Properties Using Data Science

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Open Access

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Year : April 4, 2024 at 3:27 pm | [if 1553 equals=””] Volume :11 [else] Volume :11[/if 1553] | [if 424 equals=”Regular Issue”]Issue[/if 424][if 424 equals=”Special Issue”]Special Issue[/if 424] [if 424 equals=”Conference”][/if 424] : 01 | Page : –

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    V. R. Siva, R. Durga

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  1. Student, Associate Professor, Department of Computer Science, VISTAS, Pallavaram, Chennai, Department of Computer Science, VISTAS, Pallavaram, Chennai, Tamil Nadu, Tamil Nadu, India, India
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Abstract

nA key component of forecasting home prices and rental patterns is real estate market analysis. Data science, data mining methodologies, and statistical models are some of the strategies that have been created in recent years to solve this problem. A few problems required to be resolved, such as the obstacles caused by the availability and quality of the data. The presence of outliers, missing values, and inconsistent formats in housing datasets might have a negative impact on prediction models’ performance. Ensuring data accuracy and coverage necessitates working with government agencies and data providers in conjunction with meticulous data preparation processes. A number of major issues impede the accuracy and dependability of current systems. Only a little amount of thorough and current data is readily available, market dynamics are complicated, and effective.

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Keywords: key component, Data science, data mining , rental patterns, real estate, market analysis

n[if 424 equals=”Regular Issue”][This article belongs to Recent Trends in Parallel Computing(rtpc)]

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[/if 424][if 424 equals=”Special Issue”][This article belongs to Special Issue under section in Recent Trends in Parallel Computing(rtpc)][/if 424][if 424 equals=”Conference”]This article belongs to Conference [/if 424]

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How to cite this article: V. R. Siva, R. Durga Interest Level Prediction in Rental Properties Using Data Science rtpc April 4, 2024; 11:-

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How to cite this URL: V. R. Siva, R. Durga Interest Level Prediction in Rental Properties Using Data Science rtpc April 4, 2024 {cited April 4, 2024};11:-. Available from: https://journals.stmjournals.com/rtpc/article=April 4, 2024/view=0

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References

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[if 424 not_equal=””]Regular Issue[else]Published[/if 424] Subscription Review Article

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Recent Trends in Parallel Computing

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[if 344 not_equal=””]ISSN: 2393-8749[/if 344]

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Volume 11
[if 424 equals=”Regular Issue”]Issue[/if 424][if 424 equals=”Special Issue”]Special Issue[/if 424] [if 424 equals=”Conference”][/if 424] 01
Received February 16, 2024
Accepted March 2, 2024
Published April 4, 2024

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