Business Economy

Global Text Analytics Market Size Is Booming Worldwide with Share, Top Key Players 2024-2032

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Global Text Analytics Market Size By Part, By Application, By Industry Verticals, By Geographic Scope and Forecast

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Text Analytics Market Size and Forecast

Text Analytics Market size was valued at USD 9.49 Billion in 2023 and is projected to reach USD 55.24 Billion by 2030, growing at a CAGR of 38.90% during the forecasted period 2024 to 2030.

Global Text Analytics Market Drivers

The market drivers for the Text Analytics Market can be influenced by various factors. These may include:

  • Growing Volume of Unstructured Data: A significant volume of textual data is produced by the exponential expansion of unstructured data sources including social media, emails, consumer comments, and online reviews. The demand for text analytics tools and services is fueled by text analytics solutions’ ability to help enterprises glean insightful information from this data.
  • Growing Adoption of Natural Language Processing and Artificial Intelligence: New developments in NLP and AI technologies allow for the development of more complex text analytics tools, such as entity recognition, topic modeling, sentiment analysis, and language translation. Businesses use these AI-powered tools to learn more about industry trends, competition intelligence, and consumer behavior.
  • A Growing Emphasis on Sentiment Analysis and Customer Experience: Organizations in all sectors place a high value on comprehending consumer sentiment and feedback in order to improve customer experience, develop better goods and services, and foster customer loyalty. Text analytics solutions are becoming more and more popular in customer-centric industries as a result of their ability to help businesses analyze client sentiment, spot new trends, and react to feedback from customers in real time.
  • Demand for Competitive Insights and Business Intelligence: To uncover market opportunities, make educated business decisions, and obtain a competitive edge, organizations look to textual data for actionable insights. By examining customer preferences, rival strategies, and market trends, text analytics solutions generate important corporate intelligence and drive demand for text analytics platforms and services.
  • Regulation Compliance and Risk Management Requirements: Organizations must analyze and monitor textual data for compliance, risk management, and fraud detection in order to comply with regulations like GDPR, HIPAA, and Dodd-Frank. Adoption in regulated areas like finance, healthcare, and law is fueled by text analytics solutions, which assist firms in identifying compliance concerns, detecting fraudulent activity, and ensuring data governance and regulatory compliance.
  • Need for Sentiment Analysis and Brand Reputation Management: Sentiment analysis and brand reputation management are essential. To manage brand reputation, assess public opinion, and reduce reputational risks, organizations keep an eye on news stories, social media mentions, and online discussions. Text analytics solutions are in high demand from marketing, public relations, and corporate communications departments because they make sentiment analysis, brand monitoring, and crisis management possible through the analysis of textual data from several sources.
  • Conversational AI and chatbots are on the rise: The need for text analytics solutions that can handle and analyze conversational data is driven by the rise of conversational AI technologies and chatbots in customer care, sales, and marketing. Text analytics tools improve the efficacy of conversational AI solutions by enabling businesses to glean insights from voice recordings, chat transcripts, and interactions with virtual assistants.
  • Need for Text Mining and Knowledge Discovery: Text analytics is utilized by organizations to perform text mining, information extraction, and knowledge discovery from substantial amounts of textual data. Text analytics solutions are in high demand from the research, education, and information services sectors because they make it possible to automatically categorize, summarize, and extract insights from documents, emails, and research papers.

Global Text Analytics Market Restraints

Several factors can act as restraints or challenges for the Text Analytics Market. These may include:

  • Data Security and Privacy Issues: Strict guidelines for the gathering, storing, and handling of personal data—including text data—are enforced by privacy laws like the CCPA and GDPR. Organizations may find it difficult to implement text analytics solutions due to worries about data security and privacy, particularly with cloud-based platforms that share sensitive information with other suppliers.
  • Precision and Dependability Difficulties: It can be difficult for text analytics algorithms to reliably understand and analyze unstructured textual material, particularly in languages with intricate grammar, nuanced meanings, and context-dependent meanings. Organizations may become less confident in text analytics solutions as a result of inaccurate topic modeling, entity recognition, and sentiment analysis findings.
  • Issues with prejudice and Fairness: Text analytics algorithms may display prejudice and unfairness, which can cause discriminatory results, skewed results, and moral dilemmas. In sensitive fields like recruiting, banking, and law enforcement, biases in language models, training data, and algorithmic decision-making processes can amplify inequality, reinforce preconceptions, and damage the credibility of text analytics solutions.
  • Linguistic and Cultural Variability: Text analytics solutions that depend on language models and natural language processing techniques face difficulties due to linguistic and cultural variations between languages and locations. The efficiency and accuracy of text analytics algorithms may be impacted by variations in syntax, vocabulary, slang, and idiomatic expressions, which would restrict their usefulness and applicability in multilingual and multicultural contexts.
  • Compatibility and Complexity of Integration: It can be difficult and time-consuming to integrate text analytics solutions with current business processes, data sources, and IT systems. Text analytics tool adoption and smooth integration may be hampered by compatibility problems, data interoperability difficulties, and legacy system limitations, particularly in enterprises with fragmented data silos and heterogeneous IT infrastructures.
  • talents Gap and Talent Shortage: Data science, linguistics, machine learning, and natural language processing are among the specialist talents needed for text analytics. The adoption and implementation of text analytics solutions may be hampered by the lack of skilled experts with text analytics expertise, as businesses find it difficult to find, develop, and keep individuals possessing the requisite domain knowledge and abilities.
  • Cost and ROI Concerns: Some businesses, particularly small and medium-sized enterprises (SMEs) with tight budgets, may view the initial investment, licensing fees, and implementation expenses associated with text analytics tools as prohibitive. It can be difficult to prove the commercial value and return on investment (ROI) of text analytics projects, especially in sectors with thin profit margins or unpredictable results.
  • Organizational Inertia, Cultural Barriers, and Resistance to Change: These factors may make it more difficult for businesses to implement and use text analytics systems. Insufficient knowledge, doubts regarding the benefits, and resistance to adopting data-driven choices could impede organizational support and the effective implementation of text analytics programs.

Global Text Analytics Market Segmentation Analysis

The Text Analytics Market is segmented on the basis of Part, Application, Industry Verticals, And Geography.

By Part:

  • Software: This section covers a variety of text analytics programs, including entity extraction, topic modeling, and sentiment analysis programs.
  • Services: Training services, data analysis services, and consultancy for the implementation of text analytics solutions are all included in this category.

By Application:

  • Customer Experience Management (CEM): To increase customer happiness and loyalty, text analytics is used to analyze feedback from surveys, social media, and support channels.
  • Marketing Management: Market research, tailored marketing efforts, and personalized suggestions can all benefit from an analysis of consumer preferences and behavior.
  • Governance, Risk & Compliance (GRC): By examining text data from several sources, text analytics is utilized for risk assessment, fraud detection, and compliance monitoring.
  • Additional Uses: Product development, personnel management, document management, and market research are all included in this.

By Industry Verticals:

  • Banking, Financial Services, and Insurance (BFSI): Text analytics is used in this industry for consumer sentiment analysis, risk management, and fraud detection.
  • Retail and e-commerce: Text analytics facilitates customer experience personalization, product offering optimization, and review analysis.
  • Healthcare and Life Sciences: New discoveries and better healthcare can result from the analysis of clinical trial data, patient input, and medical literature.
  • Other Verticals: Text analytics is used by the government, manufacturing, media and entertainment, and telecommunications industries for a variety of reasons.

By Geography:

  • North America
  • Asia-Pacific
  • Latin America
  • Middle East & Africa
  • Europe

Key Players

The major players in the Text Analytics Market are:

  • IBM (US)
  • Microsoft (US)
  • Oracle (US)
  • SAP (Germany)
  • SAS Institute (US)
  • Clarabridge (US)
  • Lexalytics (US)
  • Luminoso Technologies (US)
  • OpenText (Canada)
  • Tableau (US) (acquired by Salesforce)

Report Scope

REPORT ATTRIBUTES DETAILS
STUDY PERIOD

2020-2030

BASE YEAR

2023

FORECAST PERIOD

2024-2030

HISTORICAL PERIOD

2020-2022

UNIT

Value (USD Billion)

KEY COMPANIES PROFILED

IBM (US), Microsoft (US), Oracle (US), SAP (Germany), SAS Institute (US), Clarabridge (US), Lexalytics (US), Luminoso Technologies (US), OpenText (Canada), Tableau (US) (acquired by Salesforce)

SEGMENTS COVERED

Part, Application, Industry Verticals And Geography.

CUSTOMIZATION SCOPE

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Research Methodology of Market Research:

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• Qualitative and quantitative analysis of the market based on segmentation involving both economic as well as non-economic factors• Provision of market value (USD Billion) data for each segment and sub-segment• Indicates the region and segment that is expected to witness the fastest growth as well as to dominate the market• Analysis by geography highlighting the consumption of the product/service in the region as well as indicating the factors that are affecting the market within each region• Competitive landscape which incorporates the market ranking of the major players, along with new service/product launches, partnerships, business expansions and acquisitions in the past five years of companies profiled• Extensive company profiles comprising of company overview, company insights, product benchmarking and SWOT analysis for the major market players• The current as well as the future market outlook of the industry with respect to recent developments (which involve growth opportunities and drivers as well as challenges and restraints of both emerging as well as developed regions• Includes in-depth analysis of the market of various perspectives through Porter’s five forces analysis• Provides insight into the market through Value Chain• Market dynamics scenario, along with growth opportunities of the market in the years to come• 6-month post-sales analyst support

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Frequently Asked Questions

Text Analytics Market size was valued at USD 9.49 Billion in 2023 and is projected to reach USD 55.24 Billion by 2030, growing at a CAGR of 38.90% during the forecasted period 2024 to 2030.
Growing need to derive insights from unstructured data fuels expansion of Text Analytics market, enhancing decision-making and customer understanding.
The major players in the Text Analytics Market are IBM (US), Microsoft (US), Oracle (US), SAP (Germany), SAS Institute (US), Clarabridge (US) and more
The Text Analytics Market is segmented on the basis of Part, Application, Industry Verticals, And Geography.
The sample report for the Text Analytics Market report can be obtained on demand from the website. Also, the 24*7 chat support & direct call services are provided to procure the sample report.