# Learning formation energy of inorganic compounds using matrix variate   deep Gaussian process

**Authors:** Saket Mishra, Piyush Tagade

arXiv: 1901.06016 · 2019-04-10

## TL;DR

This paper introduces a deep Gaussian process model with a novel molecular descriptor to accurately predict formation energies of inorganic compounds, reducing the need for extensive training data and computationally expensive quantum calculations.

## Contribution

It presents a new deep Gaussian process-based method with a novel descriptor for efficient formation energy prediction using small datasets.

## Key findings

- Effective prediction of inorganic molecule formation energy.
- Reduces reliance on large datasets and expensive quantum calculations.
- Demonstrates high accuracy with limited training data.

## Abstract

Future advancement of engineering applications is dependent on design of novel materials with desired properties. Enormous size of known chemical space necessitates use of automated high throughput screening to search the desired material. The high throughput screening uses quantum chemistry calculations to predict material properties, however, computational complexity of these calculations often imposes prohibitively high cost on the search for desired material. This critical bottleneck is resolved by using deep machine learning to emulate the quantum computations. However, the deep learning algorithms require a large training dataset to ensure an acceptable generalization, which is often unavailable a-priory. In this paper, we propose a deep Gaussian process based approach to develop an emulator for quantum calculations. We further propose a novel molecular descriptor that enables implementation of the proposed approach. As demonstrated in this paper, the proposed approach can be implemented using a small dataset. We demonstrate efficacy of our approach for prediction of formation energy of inorganic molecules.

---
Source: https://tomesphere.com/paper/1901.06016