Mobbs Anthony E D, Boag Simon
School of Psychological Sciences, Faculty of Medicine, Health and Human Sciences, Macquarie University, Sydney, NSW, Australia.
Front Psychol. 2024 Aug 30;15:1335020. doi: 10.3389/fpsyg.2024.1335020. eCollection 2024.
Trust is foundational to all social science domains, but to date, there is no unifying theory or consistent measurement basis spanning the social sciences. This research hypothesized that trust forms the basis of an ontology that could unify the social science domains. The proposed ontology comprises a Cartesian plane with axes self-trust and other-trust. Self-trust manifests in dominant behaviors, and other-trust manifests in cooperative behaviors. Both axes are divided into five discrete categories, creating a matrix of 25 cells. All words in the lexicon are allocated into one of these 25 cells.
This research started with an existing 14,000-word lexicon of dominance and affiliation. The lexicon was extended by manually identifying and including socially descriptive words with information regarding self-trust, other-trust, dominance, and cooperation. The taxonomy was optimized using the Gradient Descent machine learning algorithm and commercially curated synonyms and antonyms. The t-test was employed as the objective (or loss) function for Gradient Descent optimization. Word vectors were identified using groups of four words related as synonyms and antonyms.
Over 30,000 words were identified and included in the lexicon. The optimization process yielded a t-score of over 1,000. Over 226,000 vectors were identified, such as malevolent-mean-gentle-benevolent. A new form of symmetry was identified between adjectives and verbs with a common root; for example, the words and are horizontally reflected.
The word vectors can create a metrologically compliant basis for psychometric testing. The symmetries provide insight into causes (verbs) and effects (adjectives) in social interactions. These vectors and symmetries offer the social sciences a basis of commonality with natural sciences, enabling unprecedented accuracy and precision in social science measurement.
信任是所有社会科学领域的基础,但迄今为止,尚无跨越社会科学的统一理论或一致的测量基础。本研究假设,信任构成了一个本体论的基础,该本体论可以统一社会科学领域。所提出的本体论包括一个笛卡尔平面,其坐标轴为自我信任和他人信任。自我信任表现为主导行为,他人信任表现为合作行为。两个坐标轴都分为五个离散类别,形成一个25个单元格的矩阵。词汇表中的所有单词都被分配到这25个单元格中的一个。
本研究始于一个现有的14000个单词的支配和归属词汇表。通过手动识别并纳入有关自我信任、他人信任、支配和合作的社会描述性词汇来扩展该词汇表。使用梯度下降机器学习算法以及商业策划的同义词和反义词对分类法进行优化。t检验被用作梯度下降优化的目标(或损失)函数。使用作为同义词和反义词相关的四个单词组来识别词向量。
识别出30000多个单词并纳入词汇表。优化过程产生的t分数超过1000。识别出超过226000个向量,如恶意的-刻薄的-温和的-仁慈的。在具有共同词根的形容词和动词之间发现了一种新的对称形式;例如,单词 和 是水平反射的。
词向量可以为心理测量测试创建一个符合计量学的基础。这些对称提供了对社会互动中的原因(动词)和结果(形容词)的洞察。这些向量和对称形式为社会科学提供了与自然科学的共性基础,从而在社会科学测量中实现前所未有的准确性和精确性。