Saved in:
Bibliographic Details
Main Author: Moattari, Mojtaba
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.00087
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866908510407622656
author Moattari, Mojtaba
author_facet Moattari, Mojtaba
contents LSTM models used in current Machine Learning literature and applications, has a promising solution for permitting long term information using gating mechanisms that forget and reduce effect of current input information. However, even with this pipeline, they do not optimally focus on specific old index or long-term information. This paper elaborates upon input reordering approaches to prioritize certain input indices. Moreover, no LSTM based approach is found in the literature that examines weight normalization while choosing the right weight and exponent of Lp norms through main supervised loss function. In this paper, we find out which norm best finds relationship between weights to either smooth or sparsify them. Lastly, gates, as weighted representations of inputs and states, which control reduction-extent of current input versus previous inputs (~ state), are not nonlinearized enough (through a small FFNN). As analogous to attention mechanisms, gates easily filter current information to bold (emphasize on) past inputs. Nonlinearized gates can more easily tune up to peculiar nonlinearities of specific input in the past. This type of nonlinearization is not proposed in the literature, to the best of author's knowledge. The proposed approaches are implemented and compared with a simple LSTM to understand their performance in text classification tasks. The results show they improve accuracy of LSTM.
format Preprint
id arxiv_https___arxiv_org_abs_2509_00087
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Yet Unnoticed in LSTM: Binary Tree Based Input Reordering, Weight Regularization, and Gate Nonlinearization
Moattari, Mojtaba
Machine Learning
Artificial Intelligence
LSTM models used in current Machine Learning literature and applications, has a promising solution for permitting long term information using gating mechanisms that forget and reduce effect of current input information. However, even with this pipeline, they do not optimally focus on specific old index or long-term information. This paper elaborates upon input reordering approaches to prioritize certain input indices. Moreover, no LSTM based approach is found in the literature that examines weight normalization while choosing the right weight and exponent of Lp norms through main supervised loss function. In this paper, we find out which norm best finds relationship between weights to either smooth or sparsify them. Lastly, gates, as weighted representations of inputs and states, which control reduction-extent of current input versus previous inputs (~ state), are not nonlinearized enough (through a small FFNN). As analogous to attention mechanisms, gates easily filter current information to bold (emphasize on) past inputs. Nonlinearized gates can more easily tune up to peculiar nonlinearities of specific input in the past. This type of nonlinearization is not proposed in the literature, to the best of author's knowledge. The proposed approaches are implemented and compared with a simple LSTM to understand their performance in text classification tasks. The results show they improve accuracy of LSTM.
title Yet Unnoticed in LSTM: Binary Tree Based Input Reordering, Weight Regularization, and Gate Nonlinearization
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2509.00087