Abstract

Although socially responsible investment (SRI) has developed into an important investment style, only a small number of studies discuss SRI portfolio construction. In view of the overwhelming breakthrough of machine learning in prediction, this paper proposes SRI portfolio construction models by combining a double-screening mechanism considering machine learning prediction and an extended global minimum variance (GMV) model (or extended maximum Sharpe ratio (MSPR) model), which are, respectively, named double-screening socially responsible investment (DSSRI) portfolio models I and II. The proposed models consist of two stages, i.e., stock screening and asset allocation. First, this paper develops a novel double-screening mechanism incorporating environmental, social, and corporate governance (ESG) and return potential criteria to ensure that high-quality stocks with good ESG performance and high-return potential are input into the optimal portfolio. Specifically, to obtain accurate stock return predictions, an extreme learning machine model optimized by the genetic algorithm is employed to predict stock prices. Next, to trade off the financial and ESG objectives of SRI investors, an extended GMV model (or extended MSPR model) considering the ESG factor is introduced to determine the capital allocation proportion of the stocks. We take the A-share market of China as the sample to verify the effectiveness of the proposed models. The empirical results demonstrate that compared with alternative models, the proposed models can yield better annualized return and ESG score performance as well as competitive Sharpe ratio performance.

Highlights

  • Responsible investment (SRI) considers personal values and societal concerns in investment decisions [1, 2]

  • extreme learning machine (ELM), originally developed by Huang et al [55], is an advanced algorithm for single-hidden layer feedforward neural network (SLFN), whose network topology consists of three layers, namely, the input layer, hidden layer, and output layer. e traditional algorithm for SLFN like BP algorithm determines the optimal weights through multiple iterations, while the ELM randomly generates input weights and biases of the hidden layer. e ELM can analytically calculate the output weights based on the minimum norm least squares solution. erefore, compared with the BP algorithm, the ELM is capable of obtaining good generalized performance at an extremely fast speed

  • We propose two Socially responsible investment (SRI) portfolio construction models called double-screening socially responsible investment (DSSRI)-I and DSSRI-II based on machine learning, intelligent algorithm, and portfolio theory. e models consist of two stages: stock screening and asset allocation

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Summary

Introduction

Responsible investment (SRI) considers personal values and societal concerns in investment decisions [1, 2]. SRI investors consider investing as an extension of their lifestyle and are willing to incorporate their social beliefs and values into financial activities [3]. As of 2020, there were 3038 signatories in the global financial market agreeing to abide by the Principles for Responsible Investment supported by the United Nations, encompassing management assets of 103.4 trillion dollars. Compared with the levels in 2019, this number of signatories represented an increase of 20%, and the management asset volume exhibited an increase of 666 trillion dollars (see Principles for Responsible Investment at http://www.unpri.org). Researchers have explored SRI related topics from various perspectives, including the motivation of SRI investors [5, 6], socially responsible measurement [7, 8], and the relationship between ESG rating and finance returns of the firm [9, 10].

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