Pervasive advisor for major expenditures
US-11631127-B1 · Apr 18, 2023 · US
US2022207589A1 · US · A1
| Field | Value |
|---|---|
| Publication number | US-2022207589-A1 |
| Application number | US-202217696003-A |
| Country | US |
| Kind code | A1 |
| Filing date | Mar 16, 2022 |
| Priority date | Dec 12, 2019 |
| Publication date | Jun 30, 2022 |
| Grant date | — |
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A computer-implemented method for determining a reward associated with one or more transactions of a user may comprise obtaining travel data of the user via a device associated with the user, wherein the travel data includes travel dates of the user; obtaining, via one or more processors, exchange rate data based on the travel data of the user; determining, via the one or more processors, a value of the reward associated with the one or more transactions of the user during the travel dates based on the exchange rate data; transmitting, to the user, a notification indicative of the reward associated with the one or more transactions; and causing the reward associated with the one or more transactions to be directed to a financial account associated with the user.
Opening claim text (preview).
1 - 20 . (canceled) 21 . A computer-implemented method for providing an item recommendation for a user, the method comprising: obtaining, via one or more processors, transactional data of the user and prior transactional data of a plurality of users from one or more transactional entities, wherein the transactional data comprises at least one of an income pattern or a spending pattern of the user; determining, via the one or more processors, a payment goal of the user based on one or more inputs provided via one or more interactive components of a user device, wherein the one or more inputs include a personalized payment amount defined by the user; determining, via the one or more processors, purchasing power data of the user based on the transactional data and the payment goal, and prior purchasing power data of the plurality of users based on the prior transactional data, wherein the purchasing power data comprises at least an item price range; obtaining, via the one or more processors, sales data of one or more items, wherein the sales data of the one or more items comprises sale prices of the one or more items; determining, via use of a trained machine learning model, the item recommendation based on at least one mapped variable, the trained machine learning model having an input layer to receive the purchasing power data, an internal layer that upon receipt from the input layer maps the purchasing power data to the at least one variable based on a mapping of the prior purchasing power data to the sales data, and an output layer to map the at least one variable to a value of the item recommendation as a function of the internal layer; and transmitting, to the user device, a notification indicating the item recommendation. 22 . The computer-implemented method of claim 21 , wherein the transactional data further includes a debt, a loan, an additional income, or a credit score of the user. 23 . The computer-implemented method of claim 21 , wherein the one or more transactional entities include one or more merchants including one or more item vendors, financial services providers, or online resources. 24 . The computer-implemented method of claim 23 , wherein the one or more transactional entities include the one or more item vendors, and wherein the sales data of the one or more items further includes one or more vendor identifications associated with the one or more item vendors. 25 . The computer-implemented method of claim 23 , wherein the one or more transactional entities include the one or more item vendors, the computer-implemented method further including transmitting, to the one or more item vendors, the notification indicating the item recommendation. 26 . The computer-implemented method of claim 21 , wherein the purchasing power data further includes demographic information of the user. 27 . The computer-implemented method of claim 21 , wherein mapping the purchasing power data with the at least one variable includes comparing the item price range of the user, the personalized payment amount of the user, and the sale prices of the one or more items. 28 . The computer-implemented method of claim 21 , further including, prior to obtaining the transactional data of the user, authenticating a user identification of the user. 29 . A computer system for providing an item recommendation to a user, comprising: a memory storing instructions; and one or more processors configured to execute the instructions to perform operations including: obtaining, via one or more processors, transactional data of the user and prior transactional data of a plurality of users from one or more transactional entities, wherein the transactional data comprises at least one of a an income pattern or a spending pattern of the user; determining, via the one or more processors, a payment goal of the user based on one or more inputs provided via one or more interactive components of a user device, wherein the one or more inputs include a personalized payment amount defined by the user; determining, via the one or more processors, purchasing power data of the user based on the transactional data and the payment goal, and prior purchasing power data of the plurality of users based on the prior transactional data, wherein the purchasing power data comprises at least an item price range; obtaining, via the one or more processors, sales data of one or more items, wherein the sales data of the one or more items comprises sale prices of the one or more items; determining, via use of a trained machine learning model, the item recommendation based on at least one mapped variable, the trained machine learning model having an input layer to receive the purchasing power data, an internal layer that upon receipt from the input layer maps the purchasing power data to the at least one variable based on a mapping of the prior purchasing power data to the sales data, and an output layer to map the at least one variable to a value of the item recommendation as a function of the internal layer; and transmitting, to the user device, a notification indicating the item recommendation. 30 . The computer system of claim 29 , wherein the transactional data further includes a debt, a loan, an additional income, or a credit score of the user. 31 . The computer system of claim 29 , wherein the one or more transactional entities include one or more merchants including one or more item vendors, financial services providers, or online resources. 32 . The computer system of claim 31 , wherein the one or more transactional entities include the one or more item vendors, and wherein the sales data of the one or more items further includes one or more dealer identifications associated with the one or more item vendors. 33 . The computer system of claim 31 , wherein the one or more transactional entities include the one or more item vendors, the operations further including transmitting, to the one or more item vendors, the notification indicating the item recommendation. 34 . The computer system of claim 29 , wherein the purchasing power data further includes demographic information of the user. 35 . The computer system of claim 29 , wherein mapping the purchasing power data with the at least one variable includes comparing the item price range of the user, the personalized payment amount of the user, and the sale prices of the one or more items. 36 . The computer system of claim 29 , further including, prior to obtaining the transactional data of the user, authenticating a user identification of the user. 37 . A computer-implemented method for providing an item recommendation, the method comprising: obtaining, via one or more processors, transactional data of a user and prior transactional data of a plurality of users from one or more transactional entities, wherein the one or more transactional entities include one or more merchants including one or more item vendors, financial services providers, or online resources, and wherein the transactional data comprises at least one of a an income pattern or a spending pattern of the user; determining, via the one or more processors, a payment goal of the user based on one or more inputs provided via a user device, wherein the one or more inputs include a personalized payment amount defined by the user; determining, via the one or more processors, purchasing power data of the user based on the transactional data and the payment goal, and prior purchasing power data of the plurality of users based on the prior transactional data, wherein the purch
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