Invention Grant
- Patent Title: Memory-based neural network for question answering
-
Application No.: US17116640Application Date: 2020-12-09
-
Publication No.: US11755570B2Publication Date: 2023-09-12
- Inventor: Quan Tran , Walter Chang , Franck Dernoncourt
- Applicant: ADOBE INC.
- Applicant Address: US CA San Jose
- Assignee: ADOBE, INC.
- Current Assignee: ADOBE, INC.
- Current Assignee Address: US CA San Jose
- Agency: F. CHAU & ASSOCIATES, LLC
- Main IPC: G06F7/00
- IPC: G06F7/00 ; G06F16/242 ; G06F40/40 ; H04L51/02 ; G06N3/08

Abstract:
The present disclosure provides a memory-based neural network for question answering. Embodiments of the disclosure identify meta-evidence nodes in an embedding space, where the meta-evidence nodes represent salient features of a training set. Each element of the training set may include a questions appended to a ground truth answer. The training set may also include questions with wrong answers that are indicated as such. In some examples, a neural Turing machine (NTM) reads a dataset and summarizes the dataset into a few meta-evidence nodes. A subsequent question may be appended to multiple candidate answers to form an input phrase, which may also be embedded in the embedding space. Then, corresponding weights may be identified for each of the meta-evidence nodes. The embedded input phrase and the weighted meta-evidence nodes may be used to identify the most appropriate answer.
Public/Granted literature
- US20220179848A1 MEMORY-BASED NEURAL NETWORK FOR QUESTION ANSWERING Public/Granted day:2022-06-09
Information query