datakilder
Definisjon
Kilder eller opprinnelser hvorfra data hentes for analyse, behandling eller referanse.
Synonymer3
Antonymer2
Eksempler på bruk1
The research team gathered data from multiple datakilder to ensure accuracy; Effective data analysis depends on reliable datakilder; Businesses often integrate various datakilder to enhance decision-making processes.
Etymologi og opprinnelse
Derived from the Norwegian compound 'data' meaning 'data' and 'kilder' meaning 'sources', the term entered English usage primarily in technical and IT contexts to describe origins of data sets.
Relasjonsmatrise
Utforsk forbindelser og sammenhenger
a/b-testing
A/B testing fundamentally depends on high-quality, relevant datakilder (data sources) to design, execute, and interpret experiments effectively within marketing, business, and digital strategy. Specifically, datakilder provide the baseline user behavior data, customer attributes, and contextual information necessary to segment audiences, define test variants, and establish meaningful success metrics. Without accurate and granular datakilder—such as web analytics, CRM data, transaction logs, or user interaction data—A/B tests cannot be properly targeted or analyzed, leading to unreliable or inconclusive results. Conversely, A/B testing generates new data that feeds back into datakilder, enriching them with insights about user preferences and behavior under different conditions. This iterative loop allows marketers and strategists to refine data collection strategies, improve customer profiling, and optimize digital experiences based on empirical evidence rather than assumptions. Therefore, datakilder not only enable the practical implementation of A/B testing but also amplify its strategic value by ensuring tests are grounded in real-world user data and that outcomes continuously enhance the underlying data ecosystem.
Account based marketing (ABM)
Account Based Marketing (ABM) fundamentally relies on high-quality, precise datakilder (data sources) to identify, segment, and deeply understand target accounts. In practice, datakilder provide the granular firmographic, technographic, behavioral, and intent data necessary to build detailed profiles of target companies and key stakeholders. This data enables marketers to tailor highly personalized campaigns and messaging that resonate with specific accounts’ needs and pain points, increasing engagement and conversion rates. Additionally, datakilder support continuous measurement and optimization of ABM efforts by supplying real-time insights on account interactions and campaign performance. Without robust datakilder, ABM would lack the actionable intelligence needed to prioritize accounts effectively, customize outreach, and justify marketing spend, making data sources a critical enabler of ABM’s precision and effectiveness within marketing, business, and digital strategy frameworks.
"ABC-Analyse (Strategic Method of Inventory Management)"
is used with
Ad monitoring software
Ad monitoring software systematically collects and analyzes advertising data from multiple sources (datakilder) such as social media platforms, search engines, competitor websites, and ad exchanges. These datakilder provide the raw, real-time information on ad placements, impressions, clicks, spend, and creative performance that the software needs to generate actionable insights. By integrating diverse datakilder, ad monitoring software enables marketers to benchmark campaigns against competitors, identify emerging trends, optimize budget allocation, and detect fraudulent or non-compliant ads. Without comprehensive and reliable datakilder, the software cannot deliver accurate performance metrics or strategic recommendations, making the quality and variety of datakilder foundational to effective ad monitoring and subsequent digital marketing strategy adjustments.
Ad copy
Ad copy effectiveness heavily depends on the quality and relevance of datakilder (data sources) because these data sources provide the insights needed to tailor messaging to specific audience segments. For example, customer demographic data, behavioral data, and purchase history from datakilder enable marketers to craft ad copy that resonates with the target audience's preferences, pain points, and motivations. Additionally, real-time data feeds can inform dynamic ad copy adjustments to improve engagement and conversion rates. Without accurate and granular datakilder, ad copy risks being generic and less impactful, reducing campaign ROI. Therefore, datakilder serve as the foundational input that guides the strategic development and continuous optimization of ad copy in digital marketing campaigns.
Ad creative testing
Ad creative testing depends heavily on datakilder (data sources) to provide the quantitative and qualitative inputs necessary for designing, executing, and evaluating experiments. Specifically, datakilder supply performance metrics such as click-through rates, conversion rates, engagement data, demographic information, and behavioral insights that enable marketers to segment audiences, tailor creative variations, and measure the effectiveness of each ad variant. Without robust datakilder, ad creative testing cannot accurately identify which creative elements resonate best with target audiences or optimize campaigns in real-time. Conversely, ad creative testing generates new data that feeds back into datakilder, enriching the dataset for future analysis and strategy refinement. This cyclical relationship ensures that data-driven decisions continuously improve creative performance, budget allocation, and overall marketing ROI.
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