Rent Reporting Offers Dataset

Author: Noah Gomez
Created: 1 July 2023
Published: 9 December 2023
Updated: 30 May 2024

Status: Active

Active - Continually Updated


Dataset Metadata

Product Concerned: Rent Reporting Service
File Type: Created in Microsoft Excel, Hosted Privately
Availability Status: Private
Mother Catelog: Private Datasets
Mother Catelog Description: A collection of datasets collected, processed, refined, and analyzed by Thick Credit.

Date Updated

30 May 2024


Description

This table hosts commercial data of over 20 rent reporting services in the market. It is a private dataset not available to the public used to identify, rank, and tailor the best offers to consumers throughout ThickCredit's product and content. We update this dataset more frequently than others because rent reporting is a nascent field with fast changing parameters & players.

Sample (Image)

Similar Datasets

This dataset is similar to but not the same as:

  • the credit builder card dataset,
  • the secured credit card dataset,
  • the savings-secured loan dataset, and
  • the rent reporting services dataset.

Data Fields in Table

  • Name. The name of the rent reporting service provider.
  • Report via Landlord. Whether the rent reporting occurs through the landlord who uses a third party service, or directly by the tenant.
  • Landlord Verification. Whether the reporting services requires the lender to corroborate the payment.
  • Scope. Whether the service covers bills and rent, or just rent.
  • Do-No-Harm Model. Whether the service reports both positive and negative information, or just positive information.
  • Autopay 4 You. Whether the service offers an autopay service, which is less common on rent reporting than loans and credit cards.
  • Reporting Delay. The duration of time before the payment is reported, if any.
  • Rewards. The type of reward provided for on-time payments, if any.
  • Credit Check. Whether the service runs a hard inquiry, soft inquiry, or other check.
  • Exp. Score Increase. The expected improvement in credit score based on the service's internal figures.
  • Signup Cost. The cost to signup for the service.
  • Past Reporting. The cost to report up to 24 months of previous rental payments, if provided.
  • Price Low (monthly). The minimum cost of the service on a monthly cadence.
  • Price Mid (monthly). The mid-tier cost of the service on a monthly cadence.
  • Price High (monthly). The maximum cost of the service on a monthly cadence.
  • Report Limit Low. The minimum credit reported to credit bureaus.
  • Report Limit Mid. The mid-tier credit reported to credit bureaus.
  • Report Limit High. The maximum credit reported to credit bureaus.
  • TransUnion. Whether the service reports to TransUnion.
  • Experian. Whether the service reports to Experian.
  • Equifax. Whether the service reports to Equifax.
  • # of Bureau. The total number of bureaus to which the service reports.
  • Reports as. Whether the service reports as revolving credit, installment credit, or separately as a rent reporting account.

Data Quality & Validation

Relevance

Data is chosen and collected with consumer borrowers in mind. Data fields are limited to metrics that inform decision-making and risk-mitigation, as well as contact information. Most of the raw data must be analyzed by Thick Credit to drive insights, except for simple fields like phone number and email.

Collection      

All data is continually collected in the field by human agents. Most data comes directly from lender websites and representatives contacted via email or phone. In some instances, automated collection techniques are used after the process has been proven and vetted by a human agent.

Accuracy

Accuracy is reinforced by dual-authentication and continual updating of evolutionary figures, such as interest rates that may evolve with the prime rate.

Completeness

In some instances, lenders refuse to communicate data points or require an application. If a reasonable substitution through peer-comparison or nearest-neighbor techniques can be used, we use these or other best practice to complete the data. Otherwise, we remove the lender from any analysis where the empty data would corrupt results. The sample is large enough to remain representative despite the removal of a small number of records.

Recency

The data is updated continually to include new data and new offers entering the market.

Cleaning

Cleaning is not required for this dataset because the data is collected raw in the field and not repurposed from other sources.

Privacy

The dataset is hosted natively offline and on hard drives inaccessible via internet channels.

Validation

Outliers do not impact raw data, only analysis. We use a conservative framework that eliminates outliers with a material impact on analytical metrics helpful to consumers.

For example, not all offers provide past reporting, so an average of this metric across all lenders would misrepresent the figure due to a superficially high denominator. We exclude them to ensure consumer borrowers have the most representative figures available.

About the Author

Noah Gomez (founder of Thick Credit) is a transatlantic professional and entrepreneur with 3+ years experience in consumer finance education. He also has 5+ years of experience in corporate finance, including debt financing, M&A, listing preparation, US GAAP and IFRS.

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