机器学习在商业智能转型中的作用

J. Bharadiya
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摘要

机器学习(ML)已经成为商业智能(BI)领域的一股变革力量,彻底改变了组织从大量数据中提取见解的方式。本文探讨了机器学习在商业智能转型中的作用及其对决策过程的影响。ML通过集成、清理和特征工程实现高效的数据收集和准备。机器学习支持的预测分析有助于预测、客户细分、需求预测和流失分析。机器学习的异常检测功能可以识别异常值、欺诈和操作异常。自然语言处理(NLP)支持情感分析、文本挖掘和聊天机器人,以增强客户支持。推荐系统使用ML技术(如协作过滤和基于内容的过滤)提供个性化建议。一旦数据准备好,就会使用各种技术和算法对其进行分析。ml驱动的数据可视化和报告支持交互式仪表板和实时监控。ML在BI中的好处包括提高准确性、更快的决策、增强客户体验、降低成本和竞争优势。然而,数据质量、伦理、可解释性和技能差距等挑战需要解决。未来的趋势包括先进的机器学习技术、增强分析、边缘计算和道德人工智能实践。机器学习在商业智能转型中的作用是至关重要的,它敦促企业拥抱机器学习,以释放其全部潜力并获得竞争优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The role of machine learning in transforming business intelligence
Machine Learning (ML) has emerged as a transformative force in the field of Business Intelligence (BI), revolutionizing the way organizations extract insights from vast amounts of data. This abstract explores the role of ML in transforming BI and its impact on decision-making processes. ML enables efficient data collection and preparation through integration, cleaning, and feature engineering. Predictive analytics powered by ML facilitates forecasting, customer segmentation, demand prediction, and churn analysis. ML's anomaly detection capabilities identify outliers, fraud, and operational anomalies. Natural Language Processing (NLP) empowers sentiment analysis, text mining, and chatbots for enhanced customer support. Recommendation systems provide personalized suggestions using ML techniques like collaborative and content-based filtering. Once the data is prepared, it is subjected to analysis using various techniques and algorithms. ML-driven data visualization and reporting enable interactive dashboards and real-time monitoring. The benefits of ML in BI include improved accuracy, faster decision-making, enhanced customer experience, cost reduction, and competitive advantage. However, challenges such as data quality, ethics, interpretability, and skill gaps need to be addressed. Future trends include advanced ML techniques, augmented analytics, edge computing, and ethical AI practices. ML's role in transforming BI is pivotal, urging businesses to embrace ML to unlock its full potential and gain a competitive edge.
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